mecomp_analysis/
chroma.rs

1//! Chroma feature extraction module.
2//!
3//! Contains functions to compute the chromagram of a song, and
4//! then from this chromagram extract the song's tone and mode
5//! (minor / major).
6extern crate noisy_float;
7
8use crate::Feature;
9
10use super::errors::{AnalysisError, AnalysisResult};
11use super::utils::{hz_to_octs_inplace, stft, Normalize};
12use ndarray::{arr1, arr2, concatenate, s, Array, Array1, Array2, Axis, Zip};
13use ndarray_stats::interpolate::Midpoint;
14use ndarray_stats::QuantileExt;
15use noisy_float::prelude::*;
16
17/**
18 * General object holding the chroma descriptor.
19 *
20 * Current chroma descriptors are interval features (see
21 * <https://speech.di.uoa.gr/ICMC-SMC-2014/images/VOL_2/1461.pdf>).
22 *
23 * Contrary to the other descriptors that can be used with streaming
24 * without consequences, this one performs better if the full song is used at
25 * once.
26 */
27#[derive(Debug, Clone)]
28#[allow(clippy::module_name_repetitions)]
29pub struct ChromaDesc {
30    sample_rate: u32,
31    n_chroma: u32,
32    values_chroma: Array2<f64>,
33}
34
35impl Normalize for ChromaDesc {
36    const MAX_VALUE: Feature = 0.12;
37    const MIN_VALUE: Feature = 0.;
38}
39
40impl ChromaDesc {
41    pub const WINDOW_SIZE: usize = 8192;
42
43    #[must_use]
44    pub fn new(sample_rate: u32, n_chroma: u32) -> Self {
45        Self {
46            sample_rate,
47            n_chroma,
48            values_chroma: Array2::zeros((n_chroma as usize, 0)),
49        }
50    }
51
52    /**
53     * Compute and store the chroma of a signal.
54     *
55     * Passing a full song here once instead of streaming smaller parts of the
56     * song will greatly improve accuracy.
57     */
58    #[allow(clippy::missing_errors_doc, clippy::missing_panics_doc)]
59    pub fn do_(&mut self, signal: &[f32]) -> AnalysisResult<()> {
60        let mut stft = stft(signal, Self::WINDOW_SIZE, 2205);
61        let tuning = estimate_tuning(self.sample_rate, &stft, Self::WINDOW_SIZE, 0.01, 12)?;
62        let chroma = chroma_stft(
63            self.sample_rate,
64            &mut stft,
65            Self::WINDOW_SIZE,
66            self.n_chroma,
67            tuning,
68        )?;
69        self.values_chroma = concatenate![Axis(1), self.values_chroma, chroma];
70        Ok(())
71    }
72
73    /**
74     * Get the song's interval features.
75     *
76     * Return the 6 pitch class set categories, as well as the major, minor,
77     * diminished and augmented triads.
78     *
79     * See this paper <https://speech.di.uoa.gr/ICMC-SMC-2014/images/VOL_2/1461.pdf>
80     * for more information ("Timbre-invariant Audio Features for Style Analysis of Classical
81     * Music").
82     */
83    pub fn get_value(&mut self) -> Vec<Feature> {
84        #[allow(clippy::cast_possible_truncation)]
85        chroma_interval_features(&self.values_chroma)
86            .mapv(|x| self.normalize(x as Feature))
87            .to_vec()
88    }
89}
90
91// Functions below are Rust versions of python notebooks by AudioLabs Erlang
92// (<https://www.audiolabs-erlangen.de/resources/MIR/FMP/C0/C0.html>)
93#[allow(
94    clippy::missing_errors_doc,
95    clippy::missing_panics_doc,
96    clippy::module_name_repetitions
97)]
98#[must_use]
99pub fn chroma_interval_features(chroma: &Array2<f64>) -> Array1<f64> {
100    let chroma = normalize_feature_sequence(&chroma.mapv(|x| (x * 15.).exp()));
101    let templates = arr2(&[
102        [1, 1, 1, 1, 1, 1, 1, 1, 1, 1],
103        [1, 0, 0, 0, 0, 0, 0, 0, 0, 0],
104        [0, 1, 0, 0, 0, 0, 0, 0, 0, 0],
105        [0, 0, 1, 0, 0, 0, 0, 1, 1, 0],
106        [0, 0, 0, 1, 0, 0, 1, 0, 0, 1],
107        [0, 0, 0, 0, 1, 0, 0, 0, 0, 0],
108        [0, 0, 0, 0, 0, 1, 0, 0, 1, 0],
109        [0, 0, 0, 0, 0, 0, 1, 1, 0, 0],
110        [0, 0, 0, 0, 0, 0, 0, 0, 0, 1],
111        [0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
112        [0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
113        [0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
114    ]);
115    let interval_feature_matrix = extract_interval_features(&chroma, &templates);
116    interval_feature_matrix.mean_axis(Axis(1)).unwrap()
117}
118
119#[must_use]
120pub fn extract_interval_features(chroma: &Array2<f64>, templates: &Array2<i32>) -> Array2<f64> {
121    let mut f_intervals: Array2<f64> = Array::zeros((chroma.shape()[1], templates.shape()[1]));
122    for (template, mut f_interval) in templates
123        .axis_iter(Axis(1))
124        .zip(f_intervals.axis_iter_mut(Axis(1)))
125    {
126        for shift in 0..12 {
127            let mut vec: Vec<i32> = template.to_vec();
128            vec.rotate_right(shift);
129            let rolled = arr1(&vec);
130            let power = Zip::from(chroma.t())
131                .and_broadcast(&rolled)
132                .map_collect(|&f, &s| f.powi(s))
133                .map_axis_mut(Axis(1), |x| x.product());
134            f_interval += &power;
135        }
136    }
137    f_intervals.t().to_owned()
138}
139
140pub fn normalize_feature_sequence(feature: &Array2<f64>) -> Array2<f64> {
141    let mut normalized_sequence = feature.to_owned();
142    for mut column in normalized_sequence.columns_mut() {
143        let mut sum = column.mapv(f64::abs).sum();
144        if sum < 0.0001 {
145            sum = 1.;
146        }
147        column /= sum;
148    }
149
150    normalized_sequence
151}
152
153// All the functions below are more than heavily inspired from
154// librosa"s code: https://github.com/librosa/librosa/blob/main/librosa/feature/spectral.py#L1165
155// chroma(22050, n_fft=5, n_chroma=12)
156//
157// Could be precomputed, but it takes very little time to compute it
158// on the fly compared to the rest of the functions, and we'd lose the
159// possibility to tweak parameters.
160#[allow(
161    clippy::missing_errors_doc,
162    clippy::missing_panics_doc,
163    clippy::module_name_repetitions
164)]
165pub fn chroma_filter(
166    sample_rate: u32,
167    n_fft: usize,
168    n_chroma: u32,
169    tuning: f64,
170) -> AnalysisResult<Array2<f64>> {
171    let ctroct = 5.0;
172    let octwidth = 2.;
173    let n_chroma_float = f64::from(n_chroma);
174    #[allow(clippy::cast_possible_truncation, clippy::cast_precision_loss)]
175    let n_chroma2 = (n_chroma_float / 2.0).round(); // NOTE: used to be f64::from((n_chroma_float / 2.0).round() as usize)
176
177    let frequencies = Array::linspace(0., f64::from(sample_rate), n_fft + 1);
178
179    let mut freq_bins = frequencies;
180    hz_to_octs_inplace(&mut freq_bins, tuning, n_chroma);
181    freq_bins.mapv_inplace(|x| x * n_chroma_float);
182    freq_bins[0] = 1.5f64.mul_add(-n_chroma_float, freq_bins[1]);
183
184    let mut binwidth_bins = Array::ones(freq_bins.raw_dim());
185    binwidth_bins.slice_mut(s![0..freq_bins.len() - 1]).assign(
186        &(&freq_bins.slice(s![1..]) - &freq_bins.slice(s![..-1])).mapv(|x| {
187            if x <= 1. {
188                1.
189            } else {
190                x
191            }
192        }),
193    );
194
195    let mut d: Array2<f64> = Array::zeros((n_chroma as usize, (freq_bins).len()));
196    for (idx, mut row) in d.rows_mut().into_iter().enumerate() {
197        #[allow(clippy::cast_precision_loss)]
198        row.fill(idx as f64);
199    }
200    d = -d + &freq_bins;
201
202    d.mapv_inplace(|x| 10f64.mul_add(n_chroma_float, x + n_chroma2) % n_chroma_float - n_chroma2);
203    d = d / binwidth_bins;
204    d.mapv_inplace(|x| (-0.5 * (2. * x) * (2. * x)).exp());
205
206    let mut wts = d;
207    // Normalize by computing the l2-norm over the columns
208    for mut col in wts.columns_mut() {
209        let mut sum = col.mapv(|x| x * x).sum().sqrt();
210        if sum < f64::MIN_POSITIVE {
211            sum = 1.;
212        }
213        col /= sum;
214    }
215
216    freq_bins.mapv_inplace(|x| (-0.5 * ((x / n_chroma_float - ctroct) / octwidth).powi(2)).exp());
217
218    wts *= &freq_bins;
219
220    // np.roll(), np bro
221    let mut uninit: Vec<f64> = vec![0.; (wts).len()];
222    unsafe {
223        uninit.set_len(wts.len());
224    }
225    let mut b = Array::from(uninit)
226        .to_shape(wts.dim())
227        .map_err(|e| AnalysisError::AnalysisError(format!("in chroma: {e}")))?
228        .to_owned();
229    b.slice_mut(s![-3.., ..]).assign(&wts.slice(s![..3, ..]));
230    b.slice_mut(s![..-3, ..]).assign(&wts.slice(s![3.., ..]));
231
232    wts = b;
233    let non_aliased = 1 + n_fft / 2;
234    Ok(wts.slice_move(s![.., ..non_aliased]))
235}
236
237#[allow(clippy::missing_errors_doc, clippy::missing_panics_doc)]
238pub fn pip_track(
239    sample_rate: u32,
240    spectrum: &Array2<f64>,
241    n_fft: usize,
242) -> AnalysisResult<(Vec<f64>, Vec<f64>)> {
243    let sample_rate_float = f64::from(sample_rate);
244    let fmin = 150.0_f64;
245    let fmax = 4000.0_f64.min(sample_rate_float / 2.0);
246    let threshold = 0.1;
247
248    let fft_freqs = Array::linspace(0., sample_rate_float / 2., 1 + n_fft / 2);
249
250    let length = spectrum.len_of(Axis(0));
251
252    // TODO>1.0 Make this a bitvec when that won't mean depending on a crate
253    let freq_mask = fft_freqs
254        .iter()
255        .map(|&f| (fmin <= f) && (f < fmax))
256        .collect::<Vec<bool>>();
257
258    let ref_value = spectrum.map_axis(Axis(0), |x| {
259        let first: f64 = *x.first().expect("empty spectrum axis");
260        let max = x.fold(first, |acc, &elem| if acc > elem { acc } else { elem });
261        threshold * max
262    });
263
264    // There will be at most taken_columns * length elements in pitches / mags
265    let taken_columns = freq_mask
266        .iter()
267        .fold(0, |acc, &x| if x { acc + 1 } else { acc });
268    let mut pitches = Vec::with_capacity(taken_columns * length);
269    let mut mags = Vec::with_capacity(taken_columns * length);
270
271    let beginning = freq_mask
272        .iter()
273        .position(|&b| b)
274        .ok_or_else(|| AnalysisError::AnalysisError(String::from("in chroma")))?;
275    let end = freq_mask
276        .iter()
277        .rposition(|&b| b)
278        .ok_or_else(|| AnalysisError::AnalysisError(String::from("in chroma")))?;
279
280    let zipped = Zip::indexed(spectrum.slice(s![beginning..end - 3, ..]))
281        .and(spectrum.slice(s![beginning + 1..end - 2, ..]))
282        .and(spectrum.slice(s![beginning + 2..end - 1, ..]));
283
284    // No need to handle the last column, since freq_mask[length - 1] is
285    // always going to be `false` for 22.5kHz
286    zipped.for_each(|(i, j), &before_elem, &elem, &after_elem| {
287        if elem > ref_value[j] && after_elem <= elem && before_elem < elem {
288            let avg = 0.5 * (after_elem - before_elem);
289            let mut shift = 2f64.mul_add(elem, -after_elem) - before_elem;
290            if shift.abs() < f64::MIN_POSITIVE {
291                shift += 1.;
292            }
293            shift = avg / shift;
294            #[allow(clippy::cast_precision_loss)]
295            pitches.push(((i + beginning + 1) as f64 + shift) * sample_rate_float / n_fft as f64);
296            mags.push((0.5 * avg).mul_add(shift, elem));
297        }
298    });
299
300    Ok((pitches, mags))
301}
302
303// Only use this with strictly positive `frequencies`.
304#[allow(clippy::missing_errors_doc, clippy::missing_panics_doc)]
305pub fn pitch_tuning(
306    frequencies: &mut Array1<f64>,
307    resolution: f64,
308    bins_per_octave: u32,
309) -> AnalysisResult<f64> {
310    if frequencies.is_empty() {
311        return Ok(0.0);
312    }
313    hz_to_octs_inplace(frequencies, 0.0, 12);
314    frequencies.mapv_inplace(|x| f64::from(bins_per_octave) * x % 1.0);
315
316    // Put everything between -0.5 and 0.5.
317    frequencies.mapv_inplace(|x| if x >= 0.5 { x - 1. } else { x });
318
319    #[allow(clippy::cast_possible_truncation, clippy::cast_sign_loss)]
320    let indexes = ((frequencies.to_owned() - -0.5) / resolution).mapv(|x| x as usize);
321    #[allow(clippy::cast_possible_truncation, clippy::cast_sign_loss)]
322    let mut counts: Array1<usize> = Array::zeros(((0.5 - -0.5) / resolution) as usize);
323    for &idx in &indexes {
324        counts[idx] += 1;
325    }
326    let max_index = counts
327        .argmax()
328        .map_err(|e| AnalysisError::AnalysisError(format!("in chroma: {e}")))?;
329
330    // Return the bin with the most reoccurring frequency.
331    #[allow(clippy::cast_precision_loss)]
332    Ok((100. * resolution).mul_add(max_index as f64, -50.) / 100.)
333}
334
335#[allow(clippy::missing_errors_doc, clippy::missing_panics_doc)]
336pub fn estimate_tuning(
337    sample_rate: u32,
338    spectrum: &Array2<f64>,
339    n_fft: usize,
340    resolution: f64,
341    bins_per_octave: u32,
342) -> AnalysisResult<f64> {
343    let (pitch, mag) = pip_track(sample_rate, spectrum, n_fft)?;
344
345    let (filtered_pitch, filtered_mag): (Vec<N64>, Vec<N64>) = pitch
346        .iter()
347        .zip(&mag)
348        .filter(|(&p, _)| p > 0.)
349        .map(|(x, y)| (n64(*x), n64(*y)))
350        .unzip();
351
352    if pitch.is_empty() {
353        return Ok(0.);
354    }
355
356    let threshold: N64 = Array::from(filtered_mag.clone())
357        .quantile_axis_mut(Axis(0), n64(0.5), &Midpoint)
358        .map_err(|e| AnalysisError::AnalysisError(format!("in chroma: {e}")))?
359        .into_scalar();
360    let mut pitch = filtered_pitch
361        .iter()
362        .zip(&filtered_mag)
363        .filter_map(|(&p, &m)| if m >= threshold { Some(p.into()) } else { None })
364        .collect::<Array1<f64>>();
365    pitch_tuning(&mut pitch, resolution, bins_per_octave)
366}
367
368#[allow(
369    clippy::missing_errors_doc,
370    clippy::missing_panics_doc,
371    clippy::module_name_repetitions
372)]
373pub fn chroma_stft(
374    sample_rate: u32,
375    spectrum: &mut Array2<f64>,
376    n_fft: usize,
377    n_chroma: u32,
378    tuning: f64,
379) -> AnalysisResult<Array2<f64>> {
380    spectrum.par_mapv_inplace(|x| x * x);
381    let mut raw_chroma = chroma_filter(sample_rate, n_fft, n_chroma, tuning)?;
382
383    raw_chroma = raw_chroma.dot(spectrum);
384    for mut row in raw_chroma.columns_mut() {
385        let mut sum = row.mapv(f64::abs).sum();
386        if sum < f64::MIN_POSITIVE {
387            sum = 1.;
388        }
389        row /= sum;
390    }
391    Ok(raw_chroma)
392}
393
394#[cfg(test)]
395mod test {
396    use super::*;
397    use crate::{
398        decoder::{Decoder as _, MecompDecoder as Decoder},
399        utils::stft,
400        SAMPLE_RATE,
401    };
402    use ndarray::{arr1, arr2, Array2};
403    use ndarray_npy::ReadNpyExt as _;
404    use std::{fs::File, path::Path};
405
406    #[test]
407    fn test_chroma_interval_features() {
408        let file = File::open("data/chroma.npy").unwrap();
409        let chroma = Array2::<f64>::read_npy(file).unwrap();
410        let features = chroma_interval_features(&chroma);
411        let expected_features = arr1(&[
412            0.038_602_84,
413            0.021_852_81,
414            0.042_243_79,
415            0.063_852_78,
416            0.073_111_48,
417            0.025_125_66,
418            0.003_198_99,
419            0.003_113_08,
420            0.001_074_33,
421            0.002_418_61,
422        ]);
423        for (expected, actual) in expected_features.iter().zip(&features) {
424            assert!(
425                0.000_000_01 > (expected - actual.abs()),
426                "{expected} !~= {actual}"
427            );
428        }
429    }
430
431    #[test]
432    fn test_extract_interval_features() {
433        let file = File::open("data/chroma-interval.npy").unwrap();
434        let chroma = Array2::<f64>::read_npy(file).unwrap();
435        let templates = arr2(&[
436            [1, 1, 1, 1, 1, 1, 1, 1, 1, 1],
437            [1, 0, 0, 0, 0, 0, 0, 0, 0, 0],
438            [0, 1, 0, 0, 0, 0, 0, 0, 0, 0],
439            [0, 0, 1, 0, 0, 0, 0, 1, 1, 0],
440            [0, 0, 0, 1, 0, 0, 1, 0, 0, 1],
441            [0, 0, 0, 0, 1, 0, 0, 0, 0, 0],
442            [0, 0, 0, 0, 0, 1, 0, 0, 1, 0],
443            [0, 0, 0, 0, 0, 0, 1, 1, 0, 0],
444            [0, 0, 0, 0, 0, 0, 0, 0, 0, 1],
445            [0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
446            [0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
447            [0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
448        ]);
449
450        let file = File::open("data/interval-feature-matrix.npy").unwrap();
451        let expected_interval_features = Array2::<f64>::read_npy(file).unwrap();
452
453        let interval_features = extract_interval_features(&chroma, &templates);
454        for (expected, actual) in expected_interval_features
455            .iter()
456            .zip(interval_features.iter())
457        {
458            assert!(
459                0.000_000_1 > (expected - actual).abs(),
460                "{expected} !~= {actual}"
461            );
462        }
463    }
464
465    #[test]
466    fn test_normalize_feature_sequence() {
467        let array = arr2(&[[0.1, 0.3, 0.4], [1.1, 0.53, 1.01]]);
468        let expected_array = arr2(&[
469            [0.083_333_33, 0.361_445_78, 0.283_687_94],
470            [0.916_666_67, 0.638_554_22, 0.716_312_06],
471        ]);
472
473        let normalized_array = normalize_feature_sequence(&array);
474
475        assert!(!array.is_empty() && !expected_array.is_empty());
476
477        for (expected, actual) in normalized_array.iter().zip(expected_array.iter()) {
478            assert!(
479                0.000_000_1 > (expected - actual).abs(),
480                "{expected} !~= {actual}"
481            );
482        }
483    }
484
485    #[test]
486    fn test_chroma_desc() {
487        let song = Decoder::decode(Path::new("data/s16_mono_22_5kHz.flac")).unwrap();
488        let mut chroma_desc = ChromaDesc::new(SAMPLE_RATE, 12);
489        chroma_desc.do_(&song.samples).unwrap();
490        let expected_values = [
491            -0.356_619_36,
492            -0.635_786_53,
493            -0.295_936_82,
494            0.064_213_04,
495            0.218_524_58,
496            -0.581_239,
497            -0.946_683_5,
498            -0.948_115_3,
499            -0.982_094_5,
500            -0.959_689_74,
501        ];
502        for (expected, actual) in expected_values.iter().zip(chroma_desc.get_value().iter()) {
503            // original test wanted absolute error < 0.0000001
504            let relative_error = (expected - actual).abs() / expected.abs();
505            assert!(
506                relative_error < 0.01,
507                "relative error: {relative_error}, expected: {expected}, actual: {actual}"
508            );
509        }
510    }
511
512    #[test]
513    fn test_chroma_stft_decode() {
514        let signal = Decoder::decode(Path::new("data/s16_mono_22_5kHz.flac"))
515            .unwrap()
516            .samples;
517        let mut stft = stft(&signal, 8192, 2205);
518
519        let file = File::open("data/chroma.npy").unwrap();
520        let expected_chroma = Array2::<f64>::read_npy(file).unwrap();
521
522        let chroma = chroma_stft(22050, &mut stft, 8192, 12, -0.049_999_999_999_999_99).unwrap();
523
524        assert!(!chroma.is_empty() && !expected_chroma.is_empty());
525
526        for (expected, actual) in expected_chroma.iter().zip(chroma.iter()) {
527            // original test wanted absolute error < 0.0000001
528            let relative_error = (expected - actual).abs() / expected.abs();
529            assert!(
530                relative_error < 0.01,
531                "relative error: {relative_error}, expected: {expected}, actual: {actual}"
532            );
533        }
534    }
535
536    #[test]
537    fn test_estimate_tuning() {
538        let file = File::open("data/spectrum-chroma.npy").unwrap();
539        let arr = Array2::<f64>::read_npy(file).unwrap();
540
541        let tuning = estimate_tuning(22050, &arr, 2048, 0.01, 12).unwrap();
542        assert!(
543            0.000_001 > (-0.099_999_999_999_999_98 - tuning).abs(),
544            "{tuning} !~= -0.09999999999999998"
545        );
546    }
547
548    #[test]
549    fn test_chroma_estimate_tuning_empty_fix() {
550        assert!(0. == estimate_tuning(22050, &Array2::zeros((8192, 1)), 8192, 0.01, 12).unwrap());
551    }
552
553    #[test]
554    fn test_estimate_tuning_decode() {
555        let signal = Decoder::decode(Path::new("data/s16_mono_22_5kHz.flac"))
556            .unwrap()
557            .samples;
558        let stft = stft(&signal, 8192, 2205);
559
560        let tuning = estimate_tuning(22050, &stft, 8192, 0.01, 12).unwrap();
561        assert!(
562            0.000_001 > (-0.049_999_999_999_999_99 - tuning).abs(),
563            "{tuning} !~= -0.04999999999999999"
564        );
565    }
566
567    #[test]
568    fn test_pitch_tuning() {
569        let file = File::open("data/pitch-tuning.npy").unwrap();
570        let mut pitch = Array1::<f64>::read_npy(file).unwrap();
571
572        assert_eq!(-0.1, pitch_tuning(&mut pitch, 0.05, 12).unwrap());
573    }
574
575    #[test]
576    fn test_pitch_tuning_no_frequencies() {
577        let mut frequencies = arr1(&[]);
578        assert_eq!(0.0, pitch_tuning(&mut frequencies, 0.05, 12).unwrap());
579    }
580
581    #[test]
582    fn test_pip_track() {
583        let file = File::open("data/spectrum-chroma.npy").unwrap();
584        let spectrum = Array2::<f64>::read_npy(file).unwrap();
585
586        let mags_file = File::open("data/spectrum-chroma-mags.npy").unwrap();
587        let expected_mags = Array1::<f64>::read_npy(mags_file).unwrap();
588
589        let pitches_file = File::open("data/spectrum-chroma-pitches.npy").unwrap();
590        let expected_pitches = Array1::<f64>::read_npy(pitches_file).unwrap();
591
592        let (mut pitches, mut mags) = pip_track(22050, &spectrum, 2048).unwrap();
593        pitches.sort_by(|a, b| a.partial_cmp(b).unwrap());
594        mags.sort_by(|a, b| a.partial_cmp(b).unwrap());
595
596        for (expected_pitches, actual_pitches) in expected_pitches.iter().zip(pitches.iter()) {
597            assert!(
598                0.000_000_01 > (expected_pitches - actual_pitches).abs(),
599                "{expected_pitches} !~= {actual_pitches}"
600            );
601        }
602        for (expected_mags, actual_mags) in expected_mags.iter().zip(mags.iter()) {
603            assert!(
604                0.000_000_01 > (expected_mags - actual_mags).abs(),
605                "{expected_mags} !~= {actual_mags}"
606            );
607        }
608    }
609
610    #[test]
611    fn test_chroma_filter() {
612        let file = File::open("data/chroma-filter.npy").unwrap();
613        let expected_filter = Array2::<f64>::read_npy(file).unwrap();
614
615        let filter = chroma_filter(22050, 2048, 12, -0.1).unwrap();
616
617        for (expected, actual) in expected_filter.iter().zip(filter.iter()) {
618            assert!(
619                0.000_000_001 > (expected - actual).abs(),
620                "{expected} !~= {actual}"
621            );
622        }
623    }
624}