nalgebra/src/base/matrix.rs
2018-10-13 12:59:36 +02:00

1398 lines
42 KiB
Rust
Raw Blame History

This file contains invisible Unicode characters

This file contains invisible Unicode characters that are indistinguishable to humans but may be processed differently by a computer. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

use num::Zero;
use num_complex::Complex;
#[cfg(feature = "abomonation-serialize")]
use std::io::{Result as IOResult, Write};
use approx::{AbsDiffEq, RelativeEq, UlpsEq};
use std::any::TypeId;
use std::cmp::Ordering;
use std::fmt;
use std::marker::PhantomData;
use std::mem;
#[cfg(feature = "serde-serialize")]
use serde::{Deserialize, Deserializer, Serialize, Serializer};
#[cfg(feature = "abomonation-serialize")]
use abomonation::Abomonation;
use alga::general::{Real, Ring};
use base::allocator::{Allocator, SameShapeAllocator, SameShapeC, SameShapeR};
use base::constraint::{DimEq, SameNumberOfColumns, SameNumberOfRows, ShapeConstraint};
use base::dimension::{Dim, DimAdd, DimSum, U1, U2, U3};
use base::iter::{MatrixIter, MatrixIterMut};
use base::storage::{
ContiguousStorage, ContiguousStorageMut, Owned, SameShapeStorage, Storage, StorageMut,
};
use base::{DefaultAllocator, MatrixMN, MatrixN, Scalar, Unit, VectorN};
/// A square matrix.
pub type SquareMatrix<N, D, S> = Matrix<N, D, D, S>;
/// A matrix with one column and `D` rows.
pub type Vector<N, D, S> = Matrix<N, D, U1, S>;
/// A matrix with one row and `D` columns .
pub type RowVector<N, D, S> = Matrix<N, U1, D, S>;
/// The type of the result of a matrix sum.
pub type MatrixSum<N, R1, C1, R2, C2> =
Matrix<N, SameShapeR<R1, R2>, SameShapeC<C1, C2>, SameShapeStorage<N, R1, C1, R2, C2>>;
/// The type of the result of a matrix sum.
pub type VectorSum<N, R1, R2> =
Matrix<N, SameShapeR<R1, R2>, U1, SameShapeStorage<N, R1, U1, R2, U1>>;
/// The type of the result of a matrix cross product.
pub type MatrixCross<N, R1, C1, R2, C2> =
Matrix<N, SameShapeR<R1, R2>, SameShapeC<C1, C2>, SameShapeStorage<N, R1, C1, R2, C2>>;
/// The most generic column-major matrix (and vector) type.
///
/// It combines four type parameters:
/// - `N`: for the matrix components scalar type.
/// - `R`: for the matrix number of rows.
/// - `C`: for the matrix number of columns.
/// - `S`: for the matrix data storage, i.e., the buffer that actually contains the matrix
/// components.
///
/// The matrix dimensions parameters `R` and `C` can either be:
/// - type-level unsigned integer constants (e.g. `U1`, `U124`) from the `nalgebra::` root module.
/// All numbers from 0 to 127 are defined that way.
/// - type-level unsigned integer constants (e.g. `U1024`, `U10000`) from the `typenum::` crate.
/// Using those, you will not get error messages as nice as for numbers smaller than 128 defined on
/// the `nalgebra::` module.
/// - the special value `Dynamic` from the `nalgebra::` root module. This indicates that the
/// specified dimension is not known at compile-time. Note that this will generally imply that the
/// matrix data storage `S` performs a dynamic allocation and contains extra metadata for the
/// matrix shape.
///
/// Note that mixing `Dynamic` with type-level unsigned integers is allowed. Actually, a
/// dynamically-sized column vector should be represented as a `Matrix<N, Dynamic, U1, S>` (given
/// some concrete types for `N` and a compatible data storage type `S`).
#[repr(C)]
#[derive(Hash, Clone, Copy)]
pub struct Matrix<N: Scalar, R: Dim, C: Dim, S> {
/// The data storage that contains all the matrix components and informations about its number
/// of rows and column (if needed).
pub data: S,
_phantoms: PhantomData<(N, R, C)>,
}
impl<N: Scalar, R: Dim, C: Dim, S: fmt::Debug> fmt::Debug for Matrix<N, R, C, S> {
fn fmt(&self, formatter: &mut fmt::Formatter) -> Result<(), fmt::Error> {
formatter
.debug_struct("Matrix")
.field("data", &self.data)
.finish()
}
}
#[cfg(feature = "serde-serialize")]
impl<N, R, C, S> Serialize for Matrix<N, R, C, S>
where
N: Scalar,
R: Dim,
C: Dim,
S: Serialize,
{
fn serialize<T>(&self, serializer: T) -> Result<T::Ok, T::Error>
where
T: Serializer,
{
self.data.serialize(serializer)
}
}
#[cfg(feature = "serde-serialize")]
impl<'de, N, R, C, S> Deserialize<'de> for Matrix<N, R, C, S>
where
N: Scalar,
R: Dim,
C: Dim,
S: Deserialize<'de>,
{
fn deserialize<D>(deserializer: D) -> Result<Self, D::Error>
where
D: Deserializer<'de>,
{
S::deserialize(deserializer).map(|x| Matrix {
data: x,
_phantoms: PhantomData,
})
}
}
#[cfg(feature = "abomonation-serialize")]
impl<N: Scalar, R: Dim, C: Dim, S: Abomonation> Abomonation for Matrix<N, R, C, S> {
unsafe fn entomb<W: Write>(&self, writer: &mut W) -> IOResult<()> {
self.data.entomb(writer)
}
unsafe fn exhume<'a, 'b>(&'a mut self, bytes: &'b mut [u8]) -> Option<&'b mut [u8]> {
self.data.exhume(bytes)
}
fn extent(&self) -> usize {
self.data.extent()
}
}
impl<N: Scalar, R: Dim, C: Dim, S> Matrix<N, R, C, S> {
/// Creates a new matrix with the given data without statically checking that the matrix
/// dimension matches the storage dimension.
#[inline]
pub unsafe fn from_data_statically_unchecked(data: S) -> Matrix<N, R, C, S> {
Matrix {
data: data,
_phantoms: PhantomData,
}
}
}
impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
/// Creates a new matrix with the given data.
#[inline]
pub fn from_data(data: S) -> Matrix<N, R, C, S> {
unsafe { Self::from_data_statically_unchecked(data) }
}
/// The total number of elements of this matrix.
#[inline]
pub fn len(&self) -> usize {
let (nrows, ncols) = self.shape();
nrows * ncols
}
/// The shape of this matrix returned as the tuple (number of rows, number of columns).
#[inline]
pub fn shape(&self) -> (usize, usize) {
let (nrows, ncols) = self.data.shape();
(nrows.value(), ncols.value())
}
/// The number of rows of this matrix.
#[inline]
pub fn nrows(&self) -> usize {
self.shape().0
}
/// The number of columns of this matrix.
#[inline]
pub fn ncols(&self) -> usize {
self.shape().1
}
/// The strides (row stride, column stride) of this matrix.
#[inline]
pub fn strides(&self) -> (usize, usize) {
let (srows, scols) = self.data.strides();
(srows.value(), scols.value())
}
/// Iterates through this matrix coordinates.
#[inline]
pub fn iter(&self) -> MatrixIter<N, R, C, S> {
MatrixIter::new(&self.data)
}
/// Computes the row and column coordinates of the i-th element of this matrix seen as a
/// vector.
#[inline]
pub fn vector_to_matrix_index(&self, i: usize) -> (usize, usize) {
let (nrows, ncols) = self.shape();
// Two most common uses that should be optimized by the compiler for statically-sized
// matrices.
if nrows == 1 {
(0, i)
} else if ncols == 1 {
(i, 0)
} else {
(i % nrows, i / nrows)
}
}
/// Gets a reference to the element of this matrix at row `irow` and column `icol` without
/// bound-checking.
#[inline]
pub unsafe fn get_unchecked(&self, irow: usize, icol: usize) -> &N {
debug_assert!(
irow < self.nrows() && icol < self.ncols(),
"Matrix index out of bounds."
);
self.data.get_unchecked(irow, icol)
}
/// Tests whether `self` and `rhs` are equal up to a given epsilon.
///
/// See `relative_eq` from the `RelativeEq` trait for more details.
#[inline]
pub fn relative_eq<R2, C2, SB>(
&self,
other: &Matrix<N, R2, C2, SB>,
eps: N::Epsilon,
max_relative: N::Epsilon,
) -> bool
where
N: RelativeEq,
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
N::Epsilon: Copy,
ShapeConstraint: SameNumberOfRows<R, R2> + SameNumberOfColumns<C, C2>,
{
assert!(self.shape() == other.shape());
self.iter()
.zip(other.iter())
.all(|(a, b)| a.relative_eq(b, eps, max_relative))
}
/// Tests whether `self` and `rhs` are exactly equal.
#[inline]
pub fn eq<R2, C2, SB>(&self, other: &Matrix<N, R2, C2, SB>) -> bool
where
N: PartialEq,
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, R2> + SameNumberOfColumns<C, C2>,
{
assert!(self.shape() == other.shape());
self.iter().zip(other.iter()).all(|(a, b)| *a == *b)
}
/// Moves this matrix into one that owns its data.
#[inline]
pub fn into_owned(self) -> MatrixMN<N, R, C>
where
DefaultAllocator: Allocator<N, R, C>,
{
Matrix::from_data(self.data.into_owned())
}
// FIXME: this could probably benefit from specialization.
// XXX: bad name.
/// Moves this matrix into one that owns its data. The actual type of the result depends on
/// matrix storage combination rules for addition.
#[inline]
pub fn into_owned_sum<R2, C2>(self) -> MatrixSum<N, R, C, R2, C2>
where
R2: Dim,
C2: Dim,
DefaultAllocator: SameShapeAllocator<N, R, C, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, R2> + SameNumberOfColumns<C, C2>,
{
if TypeId::of::<SameShapeStorage<N, R, C, R2, C2>>() == TypeId::of::<Owned<N, R, C>>() {
// We can just return `self.into_owned()`.
unsafe {
// FIXME: check that those copies are optimized away by the compiler.
let owned = self.into_owned();
let res = mem::transmute_copy(&owned);
mem::forget(owned);
res
}
} else {
self.clone_owned_sum()
}
}
/// Clones this matrix to one that owns its data.
#[inline]
pub fn clone_owned(&self) -> MatrixMN<N, R, C>
where
DefaultAllocator: Allocator<N, R, C>,
{
Matrix::from_data(self.data.clone_owned())
}
/// Clones this matrix into one that owns its data. The actual type of the result depends on
/// matrix storage combination rules for addition.
#[inline]
pub fn clone_owned_sum<R2, C2>(&self) -> MatrixSum<N, R, C, R2, C2>
where
R2: Dim,
C2: Dim,
DefaultAllocator: SameShapeAllocator<N, R, C, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, R2> + SameNumberOfColumns<C, C2>,
{
let (nrows, ncols) = self.shape();
let nrows: SameShapeR<R, R2> = Dim::from_usize(nrows);
let ncols: SameShapeC<C, C2> = Dim::from_usize(ncols);
let mut res: MatrixSum<N, R, C, R2, C2> =
unsafe { Matrix::new_uninitialized_generic(nrows, ncols) };
// FIXME: use copy_from
for j in 0..res.ncols() {
for i in 0..res.nrows() {
unsafe {
*res.get_unchecked_mut(i, j) = *self.get_unchecked(i, j);
}
}
}
res
}
/// Returns a matrix containing the result of `f` applied to each of its entries.
#[inline]
pub fn map<N2: Scalar, F: FnMut(N) -> N2>(&self, mut f: F) -> MatrixMN<N2, R, C>
where
DefaultAllocator: Allocator<N2, R, C>,
{
let (nrows, ncols) = self.data.shape();
let mut res = unsafe { MatrixMN::new_uninitialized_generic(nrows, ncols) };
for j in 0..ncols.value() {
for i in 0..nrows.value() {
unsafe {
let a = *self.data.get_unchecked(i, j);
*res.data.get_unchecked_mut(i, j) = f(a)
}
}
}
res
}
/// Returns a matrix containing the result of `f` applied to each of its entries. Unlike `map`,
/// `f` also gets passed the row and column index, i.e. `f(value, row, col)`.
#[inline]
pub fn map_with_location<N2: Scalar, F: FnMut(usize, usize, N) -> N2>(&self, mut f: F) -> MatrixMN<N2, R, C>
where
DefaultAllocator: Allocator<N2, R, C>,
{
let (nrows, ncols) = self.data.shape();
let mut res = unsafe { MatrixMN::new_uninitialized_generic(nrows, ncols) };
for j in 0..ncols.value() {
for i in 0..nrows.value() {
unsafe {
let a = *self.data.get_unchecked(i, j);
*res.data.get_unchecked_mut(i, j) = f(i, j, a)
}
}
}
res
}
/// Returns a matrix containing the result of `f` applied to each entries of `self` and
/// `rhs`.
#[inline]
pub fn zip_map<N2, N3, S2, F>(&self, rhs: &Matrix<N2, R, C, S2>, mut f: F) -> MatrixMN<N3, R, C>
where
N2: Scalar,
N3: Scalar,
S2: Storage<N2, R, C>,
F: FnMut(N, N2) -> N3,
DefaultAllocator: Allocator<N3, R, C>,
{
let (nrows, ncols) = self.data.shape();
let mut res = unsafe { MatrixMN::new_uninitialized_generic(nrows, ncols) };
assert!(
(nrows.value(), ncols.value()) == rhs.shape(),
"Matrix simultaneous traversal error: dimension mismatch."
);
for j in 0..ncols.value() {
for i in 0..nrows.value() {
unsafe {
let a = *self.data.get_unchecked(i, j);
let b = *rhs.data.get_unchecked(i, j);
*res.data.get_unchecked_mut(i, j) = f(a, b)
}
}
}
res
}
/// Returns a matrix containing the result of `f` applied to each entries of `self` and
/// `b`, and `c`.
#[inline]
pub fn zip_zip_map<N2, N3, N4, S2, S3, F>(&self, b: &Matrix<N2, R, C, S2>, c: &Matrix<N3, R, C, S3>, mut f: F) -> MatrixMN<N4, R, C>
where
N2: Scalar,
N3: Scalar,
N4: Scalar,
S2: Storage<N2, R, C>,
S3: Storage<N3, R, C>,
F: FnMut(N, N2, N3) -> N4,
DefaultAllocator: Allocator<N4, R, C>,
{
let (nrows, ncols) = self.data.shape();
let mut res = unsafe { MatrixMN::new_uninitialized_generic(nrows, ncols) };
assert!(
(nrows.value(), ncols.value()) == b.shape() && (nrows.value(), ncols.value()) == c.shape(),
"Matrix simultaneous traversal error: dimension mismatch."
);
for j in 0..ncols.value() {
for i in 0..nrows.value() {
unsafe {
let a = *self.data.get_unchecked(i, j);
let b = *b.data.get_unchecked(i, j);
let c = *c.data.get_unchecked(i, j);
*res.data.get_unchecked_mut(i, j) = f(a, b, c)
}
}
}
res
}
/// Transposes `self` and store the result into `out`.
#[inline]
pub fn transpose_to<R2, C2, SB>(&self, out: &mut Matrix<N, R2, C2, SB>)
where
R2: Dim,
C2: Dim,
SB: StorageMut<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, C2> + SameNumberOfColumns<C, R2>,
{
let (nrows, ncols) = self.shape();
assert!(
(ncols, nrows) == out.shape(),
"Incompatible shape for transpose-copy."
);
// FIXME: optimize that.
for i in 0..nrows {
for j in 0..ncols {
unsafe {
*out.get_unchecked_mut(j, i) = *self.get_unchecked(i, j);
}
}
}
}
/// Transposes `self`.
#[inline]
pub fn transpose(&self) -> MatrixMN<N, C, R>
where
DefaultAllocator: Allocator<N, C, R>,
{
let (nrows, ncols) = self.data.shape();
unsafe {
let mut res = Matrix::new_uninitialized_generic(ncols, nrows);
self.transpose_to(&mut res);
res
}
}
}
impl<N: Scalar, R: Dim, C: Dim, S: StorageMut<N, R, C>> Matrix<N, R, C, S> {
/// Mutably iterates through this matrix coordinates.
#[inline]
pub fn iter_mut(&mut self) -> MatrixIterMut<N, R, C, S> {
MatrixIterMut::new(&mut self.data)
}
/// Gets a mutable reference to the i-th element of this matrix.
#[inline]
pub unsafe fn get_unchecked_mut(&mut self, irow: usize, icol: usize) -> &mut N {
debug_assert!(
irow < self.nrows() && icol < self.ncols(),
"Matrix index out of bounds."
);
self.data.get_unchecked_mut(irow, icol)
}
/// Swaps two entries without bound-checking.
#[inline]
pub unsafe fn swap_unchecked(&mut self, row_cols1: (usize, usize), row_cols2: (usize, usize)) {
debug_assert!(row_cols1.0 < self.nrows() && row_cols1.1 < self.ncols());
debug_assert!(row_cols2.0 < self.nrows() && row_cols2.1 < self.ncols());
self.data.swap_unchecked(row_cols1, row_cols2)
}
/// Swaps two entries.
#[inline]
pub fn swap(&mut self, row_cols1: (usize, usize), row_cols2: (usize, usize)) {
let (nrows, ncols) = self.shape();
assert!(
row_cols1.0 < nrows && row_cols1.1 < ncols,
"Matrix elements swap index out of bounds."
);
assert!(
row_cols2.0 < nrows && row_cols2.1 < ncols,
"Matrix elements swap index out of bounds."
);
unsafe { self.swap_unchecked(row_cols1, row_cols2) }
}
/// Fills this matrix with the content of a slice. Both must hold the same number of elements.
///
/// The components of the slice are assumed to be ordered in column-major order.
#[inline]
pub fn copy_from_slice(&mut self, slice: &[N]) {
let (nrows, ncols) = self.shape();
assert!(
nrows * ncols == slice.len(),
"The slice must contain the same number of elements as the matrix."
);
for j in 0..ncols {
for i in 0..nrows {
unsafe {
*self.get_unchecked_mut(i, j) = *slice.get_unchecked(i + j * nrows);
}
}
}
}
/// Fills this matrix with the content of another one. Both must have the same shape.
#[inline]
pub fn copy_from<R2, C2, SB>(&mut self, other: &Matrix<N, R2, C2, SB>)
where
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, R2> + SameNumberOfColumns<C, C2>,
{
assert!(
self.shape() == other.shape(),
"Unable to copy from a matrix with a different shape."
);
for j in 0..self.ncols() {
for i in 0..self.nrows() {
unsafe {
*self.get_unchecked_mut(i, j) = *other.get_unchecked(i, j);
}
}
}
}
/// Fills this matrix with the content of the transpose another one.
#[inline]
pub fn tr_copy_from<R2, C2, SB>(&mut self, other: &Matrix<N, R2, C2, SB>)
where
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
ShapeConstraint: DimEq<R, C2> + SameNumberOfColumns<C, R2>,
{
let (nrows, ncols) = self.shape();
assert!(
(ncols, nrows) == other.shape(),
"Unable to copy from a matrix with incompatible shape."
);
for j in 0..ncols {
for i in 0..nrows {
unsafe {
*self.get_unchecked_mut(i, j) = *other.get_unchecked(j, i);
}
}
}
}
/// Replaces each component of `self` by the result of a closure `f` applied on it.
#[inline]
pub fn apply<F: FnMut(N) -> N>(&mut self, mut f: F)
where
DefaultAllocator: Allocator<N, R, C>,
{
let (nrows, ncols) = self.shape();
for j in 0..ncols {
for i in 0..nrows {
unsafe {
let e = self.data.get_unchecked_mut(i, j);
*e = f(*e)
}
}
}
}
}
impl<N: Scalar, D: Dim, S: Storage<N, D>> Vector<N, D, S> {
/// Gets a reference to the i-th element of this column vector without bound checking.
#[inline]
pub unsafe fn vget_unchecked(&self, i: usize) -> &N {
debug_assert!(i < self.nrows(), "Vector index out of bounds.");
let i = i * self.strides().0;
self.data.get_unchecked_linear(i)
}
}
impl<N: Scalar, D: Dim, S: StorageMut<N, D>> Vector<N, D, S> {
/// Gets a mutable reference to the i-th element of this column vector without bound checking.
#[inline]
pub unsafe fn vget_unchecked_mut(&mut self, i: usize) -> &mut N {
debug_assert!(i < self.nrows(), "Vector index out of bounds.");
let i = i * self.strides().0;
self.data.get_unchecked_linear_mut(i)
}
}
impl<N: Scalar, R: Dim, C: Dim, S: ContiguousStorage<N, R, C>> Matrix<N, R, C, S> {
/// Extracts a slice containing the entire matrix entries ordered column-by-columns.
#[inline]
pub fn as_slice(&self) -> &[N] {
self.data.as_slice()
}
}
impl<N: Scalar, R: Dim, C: Dim, S: ContiguousStorageMut<N, R, C>> Matrix<N, R, C, S> {
/// Extracts a mutable slice containing the entire matrix entries ordered column-by-columns.
#[inline]
pub fn as_mut_slice(&mut self) -> &mut [N] {
self.data.as_mut_slice()
}
}
impl<N: Scalar, D: Dim, S: StorageMut<N, D, D>> Matrix<N, D, D, S> {
/// Transposes the square matrix `self` in-place.
pub fn transpose_mut(&mut self) {
assert!(
self.is_square(),
"Unable to transpose a non-square matrix in-place."
);
let dim = self.shape().0;
for i in 1..dim {
for j in 0..i {
unsafe { self.swap_unchecked((i, j), (j, i)) }
}
}
}
}
impl<N: Real, R: Dim, C: Dim, S: Storage<Complex<N>, R, C>> Matrix<Complex<N>, R, C, S> {
/// Takes the conjugate and transposes `self` and store the result into `out`.
#[inline]
pub fn conjugate_transpose_to<R2, C2, SB>(&self, out: &mut Matrix<Complex<N>, R2, C2, SB>)
where
R2: Dim,
C2: Dim,
SB: StorageMut<Complex<N>, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, C2> + SameNumberOfColumns<C, R2>,
{
let (nrows, ncols) = self.shape();
assert!(
(ncols, nrows) == out.shape(),
"Incompatible shape for transpose-copy."
);
// FIXME: optimize that.
for i in 0..nrows {
for j in 0..ncols {
unsafe {
*out.get_unchecked_mut(j, i) = self.get_unchecked(i, j).conj();
}
}
}
}
/// The conjugate transposition of `self`.
#[inline]
pub fn conjugate_transpose(&self) -> MatrixMN<Complex<N>, C, R>
where
DefaultAllocator: Allocator<Complex<N>, C, R>,
{
let (nrows, ncols) = self.data.shape();
unsafe {
let mut res: MatrixMN<_, C, R> = Matrix::new_uninitialized_generic(ncols, nrows);
self.conjugate_transpose_to(&mut res);
res
}
}
}
impl<N: Real, D: Dim, S: StorageMut<Complex<N>, D, D>> Matrix<Complex<N>, D, D, S> {
/// Sets `self` to its conjugate transpose.
pub fn conjugate_transpose_mut(&mut self) {
assert!(
self.is_square(),
"Unable to transpose a non-square matrix in-place."
);
let dim = self.shape().0;
for i in 1..dim {
for j in 0..i {
unsafe {
let ref_ij = self.get_unchecked_mut(i, j) as *mut Complex<N>;
let ref_ji = self.get_unchecked_mut(j, i) as *mut Complex<N>;
let conj_ij = (*ref_ij).conj();
let conj_ji = (*ref_ji).conj();
*ref_ij = conj_ji;
*ref_ji = conj_ij;
}
}
}
}
}
impl<N: Scalar, D: Dim, S: Storage<N, D, D>> SquareMatrix<N, D, S> {
/// Creates a square matrix with its diagonal set to `diag` and all other entries set to 0.
#[inline]
pub fn diagonal(&self) -> VectorN<N, D>
where
DefaultAllocator: Allocator<N, D>,
{
assert!(
self.is_square(),
"Unable to get the diagonal of a non-square matrix."
);
let dim = self.data.shape().0;
let mut res = unsafe { VectorN::new_uninitialized_generic(dim, U1) };
for i in 0..dim.value() {
unsafe {
*res.vget_unchecked_mut(i) = *self.get_unchecked(i, i);
}
}
res
}
/// Computes a trace of a square matrix, i.e., the sum of its diagonal elements.
#[inline]
pub fn trace(&self) -> N
where
N: Ring,
{
assert!(
self.is_square(),
"Cannot compute the trace of non-square matrix."
);
let dim = self.data.shape().0;
let mut res = N::zero();
for i in 0..dim.value() {
res += unsafe { *self.get_unchecked(i, i) };
}
res
}
}
impl<N: Scalar + Zero, D: DimAdd<U1>, S: Storage<N, D>> Vector<N, D, S> {
/// Computes the coordinates in projective space of this vector, i.e., appends a `0` to its
/// coordinates.
#[inline]
pub fn to_homogeneous(&self) -> VectorN<N, DimSum<D, U1>>
where
DefaultAllocator: Allocator<N, DimSum<D, U1>>,
{
let len = self.len();
let hnrows = DimSum::<D, U1>::from_usize(len + 1);
let mut res = unsafe { VectorN::<N, _>::new_uninitialized_generic(hnrows, U1) };
res.generic_slice_mut((0, 0), self.data.shape())
.copy_from(self);
res[(len, 0)] = N::zero();
res
}
/// Constructs a vector from coordinates in projective space, i.e., removes a `0` at the end of
/// `self`. Returns `None` if this last component is not zero.
#[inline]
pub fn from_homogeneous<SB>(v: Vector<N, DimSum<D, U1>, SB>) -> Option<VectorN<N, D>>
where
SB: Storage<N, DimSum<D, U1>>,
DefaultAllocator: Allocator<N, D>,
{
if v[v.len() - 1].is_zero() {
let nrows = D::from_usize(v.len() - 1);
Some(v.generic_slice((0, 0), (nrows, U1)).into_owned())
} else {
None
}
}
}
impl<N, R: Dim, C: Dim, S> AbsDiffEq for Matrix<N, R, C, S>
where
N: Scalar + AbsDiffEq,
S: Storage<N, R, C>,
N::Epsilon: Copy,
{
type Epsilon = N::Epsilon;
#[inline]
fn default_epsilon() -> Self::Epsilon {
N::default_epsilon()
}
#[inline]
fn abs_diff_eq(&self, other: &Self, epsilon: Self::Epsilon) -> bool {
self.iter()
.zip(other.iter())
.all(|(a, b)| a.abs_diff_eq(b, epsilon))
}
}
impl<N, R: Dim, C: Dim, S> RelativeEq for Matrix<N, R, C, S>
where
N: Scalar + RelativeEq,
S: Storage<N, R, C>,
N::Epsilon: Copy,
{
#[inline]
fn default_max_relative() -> Self::Epsilon {
N::default_max_relative()
}
#[inline]
fn relative_eq(
&self,
other: &Self,
epsilon: Self::Epsilon,
max_relative: Self::Epsilon,
) -> bool {
self.relative_eq(other, epsilon, max_relative)
}
}
impl<N, R: Dim, C: Dim, S> UlpsEq for Matrix<N, R, C, S>
where
N: Scalar + UlpsEq,
S: Storage<N, R, C>,
N::Epsilon: Copy,
{
#[inline]
fn default_max_ulps() -> u32 {
N::default_max_ulps()
}
#[inline]
fn ulps_eq(&self, other: &Self, epsilon: Self::Epsilon, max_ulps: u32) -> bool {
assert!(self.shape() == other.shape());
self.iter()
.zip(other.iter())
.all(|(a, b)| a.ulps_eq(b, epsilon, max_ulps))
}
}
impl<N, R: Dim, C: Dim, S> PartialOrd for Matrix<N, R, C, S>
where
N: Scalar + PartialOrd,
S: Storage<N, R, C>,
{
#[inline]
fn partial_cmp(&self, other: &Self) -> Option<Ordering> {
if self.shape() != other.shape() {
return None;
}
if self.nrows() == 0 || self.ncols() == 0 {
return Some(Ordering::Equal);
}
let mut first_ord = unsafe {
self.data
.get_unchecked_linear(0)
.partial_cmp(other.data.get_unchecked_linear(0))
};
if let Some(first_ord) = first_ord.as_mut() {
let mut it = self.iter().zip(other.iter());
let _ = it.next(); // Drop the first elements (we already tested it).
for (left, right) in it {
if let Some(ord) = left.partial_cmp(right) {
match ord {
Ordering::Equal => { /* Does not change anything. */ }
Ordering::Less => {
if *first_ord == Ordering::Greater {
return None;
}
*first_ord = ord
}
Ordering::Greater => {
if *first_ord == Ordering::Less {
return None;
}
*first_ord = ord
}
}
} else {
return None;
}
}
}
first_ord
}
#[inline]
fn lt(&self, right: &Self) -> bool {
assert!(
self.shape() == right.shape(),
"Matrix comparison error: dimensions mismatch."
);
self.iter().zip(right.iter()).all(|(a, b)| a.lt(b))
}
#[inline]
fn le(&self, right: &Self) -> bool {
assert!(
self.shape() == right.shape(),
"Matrix comparison error: dimensions mismatch."
);
self.iter().zip(right.iter()).all(|(a, b)| a.le(b))
}
#[inline]
fn gt(&self, right: &Self) -> bool {
assert!(
self.shape() == right.shape(),
"Matrix comparison error: dimensions mismatch."
);
self.iter().zip(right.iter()).all(|(a, b)| a.gt(b))
}
#[inline]
fn ge(&self, right: &Self) -> bool {
assert!(
self.shape() == right.shape(),
"Matrix comparison error: dimensions mismatch."
);
self.iter().zip(right.iter()).all(|(a, b)| a.ge(b))
}
}
impl<N, R: Dim, C: Dim, S> Eq for Matrix<N, R, C, S>
where
N: Scalar + Eq,
S: Storage<N, R, C>,
{}
impl<N, R: Dim, C: Dim, S> PartialEq for Matrix<N, R, C, S>
where
N: Scalar,
S: Storage<N, R, C>,
{
#[inline]
fn eq(&self, right: &Matrix<N, R, C, S>) -> bool {
assert!(
self.shape() == right.shape(),
"Matrix equality test dimension mismatch."
);
self.iter().zip(right.iter()).all(|(l, r)| l == r)
}
}
impl<N, R: Dim, C: Dim, S> fmt::Display for Matrix<N, R, C, S>
where
N: Scalar + fmt::Display,
S: Storage<N, R, C>,
DefaultAllocator: Allocator<usize, R, C>,
{
fn fmt(&self, f: &mut fmt::Formatter) -> fmt::Result {
#[cfg(feature = "std")]
fn val_width<N: Scalar + fmt::Display>(val: N, f: &mut fmt::Formatter) -> usize {
match f.precision() {
Some(precision) => format!("{:.1$}", val, precision).chars().count(),
None => format!("{}", val).chars().count(),
}
}
#[cfg(not(feature = "std"))]
fn val_width<N: Scalar + fmt::Display>(_: N, _: &mut fmt::Formatter) -> usize {
4
}
let (nrows, ncols) = self.data.shape();
if nrows.value() == 0 || ncols.value() == 0 {
return write!(f, "[ ]");
}
let mut max_length = 0;
let mut lengths: MatrixMN<usize, R, C> = Matrix::zeros_generic(nrows, ncols);
let (nrows, ncols) = self.shape();
for i in 0..nrows {
for j in 0..ncols {
lengths[(i, j)] = val_width(self[(i, j)], f);
max_length = ::max(max_length, lengths[(i, j)]);
}
}
let max_length_with_space = max_length + 1;
try!(writeln!(f));
try!(writeln!(
f,
" ┌ {:>width$} ┐",
"",
width = max_length_with_space * ncols - 1
));
for i in 0..nrows {
try!(write!(f, ""));
for j in 0..ncols {
let number_length = lengths[(i, j)] + 1;
let pad = max_length_with_space - number_length;
try!(write!(f, " {:>thepad$}", "", thepad = pad));
match f.precision() {
Some(precision) => try!(write!(f, "{:.1$}", (*self)[(i, j)], precision)),
None => try!(write!(f, "{}", (*self)[(i, j)])),
}
}
try!(writeln!(f, ""));
}
try!(writeln!(
f,
" └ {:>width$} ┘",
"",
width = max_length_with_space * ncols - 1
));
writeln!(f)
}
}
impl<N: Scalar + Ring, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
/// The perpendicular product between two 2D column vectors, i.e. `a.x * b.y - a.y * b.x`.
#[inline]
pub fn perp<R2, C2, SB>(&self, b: &Matrix<N, R2, C2, SB>) -> N
where
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, U2>
+ SameNumberOfColumns<C, U1>
+ SameNumberOfRows<R2, U2>
+ SameNumberOfColumns<C2, U1>,
{
assert!(self.shape() == (2, 1), "2D perpendicular product ");
unsafe {
*self.get_unchecked(0, 0) * *b.get_unchecked(1, 0)
- *self.get_unchecked(1, 0) * *b.get_unchecked(0, 0)
}
}
// FIXME: use specialization instead of an assertion.
/// The 3D cross product between two vectors.
///
/// Panics if the shape is not 3D vector. In the future, this will be implemented only for
/// dynamically-sized matrices and statically-sized 3D matrices.
#[inline]
pub fn cross<R2, C2, SB>(&self, b: &Matrix<N, R2, C2, SB>) -> MatrixCross<N, R, C, R2, C2>
where
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
DefaultAllocator: SameShapeAllocator<N, R, C, R2, C2>,
ShapeConstraint: SameNumberOfRows<R, R2> + SameNumberOfColumns<C, C2>,
{
let shape = self.shape();
assert!(
shape == b.shape(),
"Vector cross product dimension mismatch."
);
assert!(
(shape.0 == 3 && shape.1 == 1) || (shape.0 == 1 && shape.1 == 3),
"Vector cross product dimension mismatch."
);
if shape.0 == 3 {
unsafe {
// FIXME: soooo ugly!
let nrows = SameShapeR::<R, R2>::from_usize(3);
let ncols = SameShapeC::<C, C2>::from_usize(1);
let mut res = Matrix::new_uninitialized_generic(nrows, ncols);
let ax = *self.get_unchecked(0, 0);
let ay = *self.get_unchecked(1, 0);
let az = *self.get_unchecked(2, 0);
let bx = *b.get_unchecked(0, 0);
let by = *b.get_unchecked(1, 0);
let bz = *b.get_unchecked(2, 0);
*res.get_unchecked_mut(0, 0) = ay * bz - az * by;
*res.get_unchecked_mut(1, 0) = az * bx - ax * bz;
*res.get_unchecked_mut(2, 0) = ax * by - ay * bx;
res
}
} else {
unsafe {
// FIXME: ugly!
let nrows = SameShapeR::<R, R2>::from_usize(1);
let ncols = SameShapeC::<C, C2>::from_usize(3);
let mut res = Matrix::new_uninitialized_generic(nrows, ncols);
let ax = *self.get_unchecked(0, 0);
let ay = *self.get_unchecked(0, 1);
let az = *self.get_unchecked(0, 2);
let bx = *b.get_unchecked(0, 0);
let by = *b.get_unchecked(0, 1);
let bz = *b.get_unchecked(0, 2);
*res.get_unchecked_mut(0, 0) = ay * bz - az * by;
*res.get_unchecked_mut(0, 1) = az * bx - ax * bz;
*res.get_unchecked_mut(0, 2) = ax * by - ay * bx;
res
}
}
}
}
impl<N: Real, S: Storage<N, U3>> Vector<N, U3, S>
where
DefaultAllocator: Allocator<N, U3>,
{
/// Computes the matrix `M` such that for all vector `v` we have `M * v == self.cross(&v)`.
#[inline]
pub fn cross_matrix(&self) -> MatrixN<N, U3> {
MatrixN::<N, U3>::new(
N::zero(),
-self[2],
self[1],
self[2],
N::zero(),
-self[0],
-self[1],
self[0],
N::zero(),
)
}
}
impl<N: Real, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
/// The smallest angle between two vectors.
#[inline]
pub fn angle<R2: Dim, C2: Dim, SB>(&self, other: &Matrix<N, R2, C2, SB>) -> N
where
SB: Storage<N, R2, C2>,
ShapeConstraint: DimEq<R, R2> + DimEq<C, C2>,
{
let prod = self.dot(other);
let n1 = self.norm();
let n2 = other.norm();
if n1.is_zero() || n2.is_zero() {
N::zero()
} else {
let cang = prod / (n1 * n2);
if cang > N::one() {
N::zero()
} else if cang < -N::one() {
N::pi()
} else {
cang.acos()
}
}
}
}
impl<N: Real, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
/// The squared L2 norm of this vector.
#[inline]
pub fn norm_squared(&self) -> N {
let mut res = N::zero();
for i in 0..self.ncols() {
let col = self.column(i);
res += col.dot(&col)
}
res
}
/// The L2 norm of this matrix.
#[inline]
pub fn norm(&self) -> N {
self.norm_squared().sqrt()
}
/// A synonym for the norm of this matrix.
///
/// Aka the length.
///
/// This function is simply implemented as a call to `norm()`
#[inline]
pub fn magnitude(&self) -> N {
self.norm()
}
/// A synonym for the squared norm of this matrix.
///
/// Aka the squared length.
///
/// This function is simply implemented as a call to `norm_squared()`
#[inline]
pub fn magnitude_squared(&self) -> N {
self.norm_squared()
}
/// Returns a normalized version of this matrix.
#[inline]
pub fn normalize(&self) -> MatrixMN<N, R, C>
where
DefaultAllocator: Allocator<N, R, C>,
{
self / self.norm()
}
/// Returns a normalized version of this matrix unless its norm as smaller or equal to `eps`.
#[inline]
pub fn try_normalize(&self, min_norm: N) -> Option<MatrixMN<N, R, C>>
where
DefaultAllocator: Allocator<N, R, C>,
{
let n = self.norm();
if n <= min_norm {
None
} else {
Some(self / n)
}
}
}
impl<N: Real, D: Dim, S: Storage<N, D>> Unit<Vector<N, D, S>> {
/// Computes the spherical linear interpolation between two unit vectors.
pub fn slerp<S2: Storage<N, D>>(&self, rhs: &Unit<Vector<N, D, S2>>, t: N) -> Unit<VectorN<N, D>>
where
DefaultAllocator: Allocator<N, D> {
// FIXME: the result is wrong when self and rhs are collinear with opposite direction.
self.try_slerp(rhs, t, N::default_epsilon()).unwrap_or(Unit::new_unchecked(self.clone_owned()))
}
/// Computes the spherical linear interpolation between two unit vectors.
///
/// Returns `None` if the two vectors are almost collinear and with opposite direction
/// (in this case, there is an infinity of possible results).
pub fn try_slerp<S2: Storage<N, D>>(&self, rhs: &Unit<Vector<N, D, S2>>, t: N, epsilon: N) -> Option<Unit<VectorN<N, D>>>
where
DefaultAllocator: Allocator<N, D> {
let c_hang = self.dot(rhs);
// self == other
if c_hang.abs() >= N::one() {
return Some(Unit::new_unchecked(self.clone_owned()));
}
let hang = c_hang.acos();
let s_hang = (N::one() - c_hang * c_hang).sqrt();
// FIXME: what if s_hang is 0.0 ? The result is not well-defined.
if relative_eq!(s_hang, N::zero(), epsilon = epsilon) {
None
} else {
let ta = ((N::one() - t) * hang).sin() / s_hang;
let tb = (t * hang).sin() / s_hang;
let res = &**self * ta + &**rhs * tb;
Some(Unit::new_unchecked(res))
}
}
}
impl<N: Real, R: Dim, C: Dim, S: StorageMut<N, R, C>> Matrix<N, R, C, S> {
/// Normalizes this matrix in-place and returns its norm.
#[inline]
pub fn normalize_mut(&mut self) -> N {
let n = self.norm();
*self /= n;
n
}
/// Normalizes this matrix in-place or does nothing if its norm is smaller or equal to `eps`.
///
/// If the normalization succeeded, returns the old normal of this matrix.
#[inline]
pub fn try_normalize_mut(&mut self, min_norm: N) -> Option<N> {
let n = self.norm();
if n <= min_norm {
None
} else {
*self /= n;
Some(n)
}
}
}
impl<N, R: Dim, C: Dim, S> AbsDiffEq for Unit<Matrix<N, R, C, S>>
where
N: Scalar + AbsDiffEq,
S: Storage<N, R, C>,
N::Epsilon: Copy,
{
type Epsilon = N::Epsilon;
#[inline]
fn default_epsilon() -> Self::Epsilon {
N::default_epsilon()
}
#[inline]
fn abs_diff_eq(&self, other: &Self, epsilon: Self::Epsilon) -> bool {
self.as_ref().abs_diff_eq(other.as_ref(), epsilon)
}
}
impl<N, R: Dim, C: Dim, S> RelativeEq for Unit<Matrix<N, R, C, S>>
where
N: Scalar + RelativeEq,
S: Storage<N, R, C>,
N::Epsilon: Copy,
{
#[inline]
fn default_max_relative() -> Self::Epsilon {
N::default_max_relative()
}
#[inline]
fn relative_eq(
&self,
other: &Self,
epsilon: Self::Epsilon,
max_relative: Self::Epsilon,
) -> bool {
self.as_ref()
.relative_eq(other.as_ref(), epsilon, max_relative)
}
}
impl<N, R: Dim, C: Dim, S> UlpsEq for Unit<Matrix<N, R, C, S>>
where
N: Scalar + UlpsEq,
S: Storage<N, R, C>,
N::Epsilon: Copy,
{
#[inline]
fn default_max_ulps() -> u32 {
N::default_max_ulps()
}
#[inline]
fn ulps_eq(&self, other: &Self, epsilon: Self::Epsilon, max_ulps: u32) -> bool {
self.as_ref().ulps_eq(other.as_ref(), epsilon, max_ulps)
}
}