# Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import os import numpy as np import pytest import torch from scipy.optimize import linear_sum_assignment as scipy_linear_sum_assignment from nemo.collections.asr.data.audio_to_label import repeat_signal from nemo.collections.asr.parts.utils.longform_clustering import LongFormSpeakerClustering from nemo.collections.asr.parts.utils.offline_clustering import ( SpeakerClustering, get_scale_interpolated_embs, getCosAffinityMatrix, getKneighborsConnections, split_input_data, ) from nemo.collections.asr.parts.utils.online_clustering import ( OnlineSpeakerClustering, get_closest_embeddings, get_merge_quantity, get_minimal_indices, merge_vectors, run_reducer, stitch_cluster_labels, ) from nemo.collections.asr.parts.utils.optimization_utils import LinearSumAssignmentSolver from nemo.collections.asr.parts.utils.optimization_utils import linear_sum_assignment as nemo_linear_sum_assignment from nemo.collections.asr.parts.utils.speaker_utils import ( OnlineSegmentor, check_ranges, fl2int, get_new_cursor_for_update, get_online_segments_from_slices, get_online_subsegments_from_buffer, get_speech_labels_for_update, get_sub_range_list, get_subsegments, get_subsegments_scriptable, get_target_sig, int2fl, is_overlap, merge_float_intervals, merge_int_intervals, tensor_to_list, ) def check_range_values(target, source): bool_list = [] for tgt, src in zip(target, source): for x, y in zip(src, tgt): bool_list.append(abs(x - y) < 1e-6) return all(bool_list) def check_labels(target, source): bool_list = [] for x, y in zip(target, source): bool_list.append(abs(x - y) < 1e-6) return all(bool_list) def matrix(mat, use_tensor=True, dtype=torch.long): if use_tensor: mat = torch.Tensor(mat).to(dtype) else: mat = np.array(mat) return mat def generate_orthogonal_embs(total_spks, perturb_sigma, emb_dim): """Generate a set of artificial orthogonal embedding vectors from random numbers""" gaus = torch.randn(emb_dim, emb_dim) _svd = torch.linalg.svd(gaus) orth = _svd[0] @ _svd[2] orth_embs = orth[:total_spks] # Assert orthogonality assert torch.abs(getCosAffinityMatrix(orth_embs) - torch.diag(torch.ones(total_spks))).sum() < 1e-4 return orth_embs def generate_toy_data( n_spks=2, spk_dur=3, emb_dim=192, perturb_sigma=0.0, ms_window=[1.5, 1.0, 0.5], ms_shift=[0.75, 0.5, 0.25], torch_seed=0, ): torch.manual_seed(torch_seed) spk_timestamps = [(spk_dur * k, spk_dur) for k in range(n_spks)] emb_list, seg_list = [], [] multiscale_segment_counts = [0 for _ in range(len(ms_window))] ground_truth = [] random_orthogonal_embs = generate_orthogonal_embs(n_spks, perturb_sigma, emb_dim) for scale_idx, (window, shift) in enumerate(zip(ms_window, ms_shift)): for spk_idx, (offset, dur) in enumerate(spk_timestamps): segments_stt_dur = get_subsegments_scriptable(offset=offset, window=window, shift=shift, duration=dur) segments = [[x[0], x[0] + x[1]] for x in segments_stt_dur] emb_cent = random_orthogonal_embs[spk_idx, :] emb = emb_cent.tile((len(segments), 1)) + 0.1 * torch.rand(len(segments), emb_dim) seg_list.extend(segments) emb_list.append(emb) if emb.shape[0] == 0: import ipdb ipdb.set_trace() multiscale_segment_counts[scale_idx] += emb.shape[0] if scale_idx == len(multiscale_segment_counts) - 1: ground_truth.extend([spk_idx] * emb.shape[0]) emb_tensor = torch.concat(emb_list) multiscale_segment_counts = torch.tensor(multiscale_segment_counts) segm_tensor = torch.tensor(seg_list) multiscale_weights = torch.ones(len(ms_window)).unsqueeze(0) ground_truth = torch.tensor(ground_truth) return emb_tensor, segm_tensor, multiscale_segment_counts, multiscale_weights, spk_timestamps, ground_truth class TestDiarizationSequneceUtilFunctions: """Tests diarization and speaker-task related utils.""" @pytest.mark.unit @pytest.mark.parametrize("Y", [[3, 3, 3, 4, 4, 5], [100, 100, 100, 104, 104, 1005]]) @pytest.mark.parametrize("target", [[0, 0, 0, 1, 1, 2]]) @pytest.mark.parametrize("offset", [1, 10]) def test_minimal_index_ex2(self, Y, target, offset): Y = torch.tensor(Y) target = torch.tensor(target) min_Y = get_minimal_indices(Y) assert check_labels(target, min_Y) min_Y = get_minimal_indices(Y + offset) assert check_labels(target, min_Y) @pytest.mark.parametrize("Y", [[4, 0, 0, 5, 4, 5], [14, 12, 12, 19, 14, 19]]) @pytest.mark.parametrize("target", [[1, 0, 0, 2, 1, 2]]) @pytest.mark.parametrize("offset", [1, 10]) def test_minimal_index_ex2(self, Y, target, offset): Y = torch.tensor(Y) target = torch.tensor(target) min_Y = get_minimal_indices(Y) assert check_labels(target, min_Y) min_Y = get_minimal_indices(Y + offset) assert check_labels(target, min_Y) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 4, 16, 64]) def test_minimal_index_same(self, N): Y = matrix([0] * N + [1] * N + [2] * N) min_Y = get_minimal_indices(Y) target = matrix([0] * N + [1] * N + [2] * N) assert check_labels(target, min_Y) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 4, 16, 64]) def test_stitch_cluster_labels_label_switch(self, N): Y_old = matrix([0] * N) Y_new = matrix([0] * N) + 1 target = matrix([0] * N) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 4, 16, 64]) def test_stitch_cluster_labels_label_many_to_one(self, N): Y_old = matrix(np.arange(N).tolist()) Y_new = matrix([0] * N) target = matrix([0] * N) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 4, 16, 64]) def test_stitch_cluster_labels_label_one_to_many(self, N): Y_old = matrix(np.arange(N).tolist()) Y_new = matrix([k for k in range(N)]) target = matrix([k for k in range(N)]) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 4, 16, 64]) def test_stitch_cluster_labels_one_label_replaced(self, N): Y_old = matrix([0] * N + [1] * N + [2] * N) Y_new = matrix([1] * N + [2] * N + [3] * N) target = matrix([0] * N + [1] * N + [2] * N) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 4, 16, 64]) def test_stitch_cluster_labels_confusion_error(self, N): Y_old = matrix([0] * N + [1] * (N - 1) + [2] * (N + 1)) Y_new = matrix([1] * N + [2] * N + [3] * N) target = matrix([0] * N + [1] * N + [2] * N) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 256]) def test_stitch_cluster_labels_speaker_more_speakers(self, N): Y_old = matrix([0] * N + [1] * (N - 1) + [2] * (N + 1) + [0, 0, 0]) Y_new = matrix([1] * N + [0] * N + [2] * N + [4, 5, 6]) target = matrix([0] * N + [1] * N + [2] * N + [3, 4, 5]) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("N", [2, 256]) def test_stitch_cluster_labels_speaker_longer_sequence(self, N): Y_old = matrix([0] * N + [1] * N + [2] * N + [0, 0, 0] * N) Y_new = matrix([1] * N + [2] * N + [0] * N + [1, 2, 3, 1, 2, 3] * N) target = matrix([0] * N + [1] * N + [2] * N + [0, 1, 3, 0, 1, 3] * N) result = stitch_cluster_labels(Y_old, Y_new) assert check_labels(target, result) @pytest.mark.unit @pytest.mark.parametrize("n_spks", [2, 3, 4, 5]) @pytest.mark.parametrize("merge_quantity", [2, 3]) def test_embedding_merger(self, n_spks, merge_quantity): em, ts, mc, mw, spk_ts, gt = generate_toy_data(n_spks, spk_dur=5, perturb_sigma=10) em_s, ts_s = split_input_data(em, ts, mc) target_speaker_index = 0 pre_clus_labels = gt ndx = torch.where(pre_clus_labels == target_speaker_index)[0] pre_embs = em_s[-1] affinity_mat = getCosAffinityMatrix(pre_embs) cmat = affinity_mat[:, ndx][ndx, :] # Check the dimension of the selected affinity values assert cmat.shape[0] == cmat.shape[1] == torch.sum(pre_clus_labels == target_speaker_index).item() index_2d, rest_inds = get_closest_embeddings(cmat, merge_quantity) # Check the most closest affinity value assert torch.max(cmat.sum(0)) == cmat.sum(0)[index_2d[0]] spk_cluster_labels, emb_ndx = pre_clus_labels[ndx], pre_embs[ndx] merged_embs, merged_clus_labels = merge_vectors(index_2d, emb_ndx, spk_cluster_labels) # Check the number of merged embeddings and labels assert (torch.sum(gt == target_speaker_index).item() - merge_quantity) == merged_clus_labels.shape[0] @pytest.mark.unit @pytest.mark.parametrize("n_spks", [1, 8]) @pytest.mark.parametrize("spk_dur", [0.2, 0.25, 0.5, 1, 10]) def test_cosine_affinity_calculation(self, n_spks, spk_dur): em, ts, mc, mw, spk_ts, gt = generate_toy_data(n_spks=n_spks, spk_dur=spk_dur) em_s, ts_s = split_input_data(em, ts, mc) affinity_mat = getCosAffinityMatrix(em_s[-1]) # affinity_mat should not contain any nan element assert torch.any(torch.isnan(affinity_mat)) == False @pytest.mark.unit @pytest.mark.parametrize("n_spks", [1, 8]) @pytest.mark.parametrize("spk_dur", [0.2, 0.25, 0.5, 1, 10]) def test_cosine_affinity_calculation_scale_interpol(self, n_spks, spk_dur): em, ts, mc, mw, spk_ts, gt = generate_toy_data(n_spks=n_spks, spk_dur=spk_dur) em_s, ts_s = split_input_data(em, ts, mc) embs, _ = get_scale_interpolated_embs(mw, em_s, ts_s) affinity_mat = getCosAffinityMatrix(embs) # affinity_mat should not contain any nan element assert torch.any(torch.isnan(affinity_mat)) == False @pytest.mark.unit @pytest.mark.parametrize("n_spks", [4, 5, 6]) @pytest.mark.parametrize("target_speaker_index", [0, 1, 2]) @pytest.mark.parametrize("merge_quantity", [2, 3]) def test_embedding_reducer(self, n_spks, target_speaker_index, merge_quantity): em, ts, mc, mw, spk_ts, gt = generate_toy_data(n_spks=n_spks, spk_dur=10) em_s, ts_s = split_input_data(em, ts, mc) merged_embs, merged_clus_labels, _ = run_reducer( pre_embs=em_s[-1], target_spk_idx=target_speaker_index, merge_quantity=merge_quantity, pre_clus_labels=gt, ) assert (torch.sum(gt == target_speaker_index).item() - merge_quantity) == merged_clus_labels.shape[0] @pytest.mark.unit @pytest.mark.parametrize("ntbr", [3]) @pytest.mark.parametrize("pcl", [torch.tensor([0] * 70 + [1] * 32)]) @pytest.mark.parametrize("mspb", [25]) def test_merge_scheduler_2clus(self, ntbr, pcl, mspb): class_target_vol = get_merge_quantity( num_to_be_removed=ntbr, pre_clus_labels=pcl, min_count_per_cluster=mspb, ) assert all(class_target_vol == torch.tensor([3, 0])) @pytest.mark.unit @pytest.mark.parametrize("ntbr", [3]) @pytest.mark.parametrize("pcl", [torch.tensor([0] * 80 + [1] * 35 + [2] * 32)]) @pytest.mark.parametrize("mspb", [0, 25]) def test_merge_scheduler_3clus(self, ntbr, pcl, mspb): class_target_vol = get_merge_quantity( num_to_be_removed=ntbr, pre_clus_labels=pcl, min_count_per_cluster=mspb, ) assert all(class_target_vol == torch.tensor([3, 0, 0])) @pytest.mark.unit @pytest.mark.parametrize("ntbr", [132 - 45]) @pytest.mark.parametrize("pcl", [torch.tensor([2] * 70 + [0] * 32 + [1] * 27 + [3] * 3)]) @pytest.mark.parametrize("mspb", [3, 10]) def test_merge_scheduler_4clus_shuff(self, ntbr, pcl, mspb): class_target_vol = get_merge_quantity( num_to_be_removed=ntbr, pre_clus_labels=pcl, min_count_per_cluster=mspb, ) assert all(class_target_vol == torch.tensor([18, 13, 56, 0])) @pytest.mark.unit @pytest.mark.parametrize("ntbr", [3]) @pytest.mark.parametrize("pcl", [torch.tensor([0] * 5 + [1] * 4 + [2] * 3)]) @pytest.mark.parametrize("mspb", [0, 2]) def test_merge_scheduler_3clus(self, ntbr, pcl, mspb): class_target_vol = get_merge_quantity( num_to_be_removed=ntbr, pre_clus_labels=pcl, min_count_per_cluster=mspb, ) assert all(class_target_vol == torch.tensor([2, 1, 0])) @pytest.mark.unit @pytest.mark.parametrize("ntbr", [2]) @pytest.mark.parametrize("pcl", [torch.tensor([0] * 7 + [1] * 5 + [2] * 3 + [3] * 5)]) @pytest.mark.parametrize("mspb", [2]) def test_merge_scheduler_3clus_repeat(self, ntbr, pcl, mspb): class_target_vol = get_merge_quantity( num_to_be_removed=ntbr, pre_clus_labels=pcl, min_count_per_cluster=mspb, ) assert all(class_target_vol == torch.tensor([2, 0, 0, 0])) class TestClassExport: @pytest.mark.unit def test_online_segmentor_class_export(self): _OnlineSegmentor = torch.jit.script(OnlineSegmentor) online_segmentor = _OnlineSegmentor(sample_rate=16000) assert isinstance(online_segmentor, OnlineSegmentor) @pytest.mark.unit def test_online_segmentor_instance_export(self): online_segmentor = OnlineSegmentor(sample_rate=16000) online_segmentor = torch.jit.script(online_segmentor) isinstance(online_segmentor, torch.jit._script.RecursiveScriptClass) @pytest.mark.unit def test_online_speaker_clustering_instance_export(self): online_clus = OnlineSpeakerClustering( max_num_speakers=8, max_rp_threshold=0.15, sparse_search_volume=30, history_buffer_size=150, current_buffer_size=150, cuda=True, ) online_clus = torch.jit.script(online_clus) isinstance(online_clus, torch.jit._script.RecursiveScriptClass) @pytest.mark.unit def test_online_speaker_clustering_instance_export(self): offline_speaker_clustering = SpeakerClustering(maj_vote_spk_count=False, min_samples_for_nmesc=0, cuda=True) offline_speaker_clustering = torch.jit.script(offline_speaker_clustering) isinstance(offline_speaker_clustering, torch.jit._script.RecursiveScriptClass) class TestGetSubsegments: @pytest.mark.unit @pytest.mark.parametrize( "offset, window, shift, duration, min_subsegment_duration, decimals, use_asr_style_frame_count, sample_rate, feat_per_sec, expected", [ (12.05, 1.5, 0.75, 2.4, 0.01, 2, False, 16000, 100, [[12.05, 1.5], [12.8, 1.5], [13.55, 0.9]]), (0, 1.0, 0.5, 0.4, 0.01, 2, False, 16000, 100, [[0, 0.4]]), (0, 2.0, 1.0, 1.5, 0.5, 2, False, 16000, 100, [[0, 1.5]]), ( 10, 1.5, 0.75, 4.5, 0.5, 2, False, 16000, 100, [[10, 1.5], [10.75, 1.5], [11.5, 1.5], [12.25, 1.5], [13.0, 1.5]], ), (0, 1.5, 0.5, 0.3, 0.01, 2, True, 16000, 100, [[0, 0.3]]), ], ) def test_get_subsegments( self, offset, window, shift, duration, min_subsegment_duration, decimals, use_asr_style_frame_count, sample_rate, feat_per_sec, expected, ): for is_scriptable in [True, False]: if is_scriptable: result = get_subsegments_scriptable( offset=offset, window=window, shift=shift, duration=duration, ) else: result = get_subsegments( offset=offset, window=window, shift=shift, duration=duration, min_subsegment_duration=min_subsegment_duration, decimals=decimals, use_asr_style_frame_count=use_asr_style_frame_count, sample_rate=sample_rate, feat_per_sec=feat_per_sec, ) result_round = [] for subsegment in result: result_round.append([round(x, decimals) for x in subsegment]) assert result_round == expected @pytest.mark.unit def test_min_subsegment_duration_filtering(self): result = get_subsegments( offset=0, window=1.5, shift=0.5, duration=3, min_subsegment_duration=2.0, decimals=2, use_asr_style_frame_count=False, ) expected = [] # Only subsegments meeting the duration filter should remain assert result == expected @pytest.mark.unit def test_zero_duration(self): result = get_subsegments( offset=0, window=1.0, shift=0.5, duration=0, min_subsegment_duration=0.01, decimals=2, use_asr_style_frame_count=False, ) assert result == [] @pytest.mark.unit def test_edge_case_short_slice(self): result = get_subsegments( offset=0, window=0.5, shift=0.25, # Shift larger than duration duration=0.25, min_subsegment_duration=0.01, decimals=2, use_asr_style_frame_count=False, ) assert result == [[0.0, 0.25]] class TestDiarizationSegmentationUtils: """ Test segmentation util functions """ @pytest.mark.unit @pytest.mark.parametrize( "intervals", [ [[1, 4], [2, 6], [8, 10], [15, 18]], [[8, 10], [15, 18], [2, 6], [1, 3]], [[8, 10], [15, 18], [2, 6], [1, 3], [3, 5]], [[8, 10], [8, 8], [15, 18], [2, 6], [1, 6], [2, 4]], ], ) @pytest.mark.parametrize("target", [[[1, 6], [8, 10], [15, 18]]]) def test_merge_int_intervals_ex1(self, intervals, target): merged = merge_int_intervals(intervals) assert check_range_values(target, merged) @pytest.mark.unit @pytest.mark.parametrize( "intervals", [ [[6, 8], [0, 9], [2, 4], [4, 7]], [[0, 9], [6, 8], [4, 7], [2, 4]], [[0, 4], [0, 0], [4, 9], [2, 4]], [[6, 8], [2, 8], [0, 3], [3, 4], [4, 5], [5, 9]], ], ) @pytest.mark.parametrize("target", [[[0, 9]]]) def test_merge_int_intervals_ex2(self, intervals, target): merged = merge_int_intervals(intervals) assert check_range_values(target, merged) @pytest.mark.unit @pytest.mark.parametrize("intervals", [[[0, 1], [1, 9]], [[0, 0], [0, 9]], [[0, 9], [0, 9]]]) @pytest.mark.parametrize("target", [[[0, 9]]]) def test_merge_int_intervals_edge_test(self, intervals, target): merged = merge_int_intervals(intervals) assert check_range_values(target, merged) @pytest.mark.unit @pytest.mark.parametrize("rangeA", [[1.0, 2.0]]) @pytest.mark.parametrize("rangeB", [[0.5, 1.5], [0.9999, 1.0001]]) def test_is_overlap_true(self, rangeA, rangeB): assert is_overlap(rangeA, rangeB) @pytest.mark.unit @pytest.mark.parametrize("rangeA", [[1.0, 2.0]]) @pytest.mark.parametrize("rangeB", [[2.0, 2.5], [-1.0, 1.00]]) def test_is_overlap_false(self, rangeA, rangeB): assert not is_overlap(rangeA, rangeB) @pytest.mark.unit @pytest.mark.parametrize("x", [1.0, 2.3456]) @pytest.mark.parametrize("decimals", [1, 2, 3, 4]) def test_fl2int(self, x, decimals): assert fl2int(x, decimals) == round(x * 10**decimals, 0) @pytest.mark.unit @pytest.mark.parametrize("x", [1234]) @pytest.mark.parametrize( "decimals", [ 1, 2, 3, 4, ], ) def test_int2fl(self, x, decimals): assert abs(int2fl(x, decimals) - round(x / (10**decimals), decimals)) < (10 ** -(decimals + 1)) @pytest.mark.unit def test_merge_float_intervals_edge_margin_test(self): intervals = [[0.0, 1.0], [1.0, 2.0]] target_0 = [[0.0, 2.0]] merged_0 = merge_float_intervals(intervals, margin=0) assert check_range_values(target_0, merged_0) target_1 = [[0.0, 1.0], [1.0, 2.0]] merged_1 = merge_float_intervals(intervals, margin=1) assert check_range_values(target_1, merged_1) target_2 = [[0.0, 1.0], [1.0, 2.0]] merged_2 = merge_float_intervals(intervals, margin=2) assert check_range_values(target_2, merged_2) @pytest.mark.unit @pytest.mark.parametrize( "intervals", [ [[0.25, 1.7], [1.5, 3.0], [2.8, 5.0], [5.5, 10.0]], [[0.25, 5.0], [5.5, 10.0], [1.5, 3.5]], [[5.5, 8.05], [8.0, 10.0], [0.25, 5.0]], [[0.25, 3.0], [1.5, 3.0], [5.5, 10.0], [2.8, 5.0]], [[0.25, 1.7], [1.5, 3.0], [2.8, 5.0], [5.5, 10.0]], ], ) @pytest.mark.parametrize("target", [[[0.25, 5.0], [5.5, 10.0]]]) def test_merge_float_overlaps(self, intervals, target): merged = merge_float_intervals(intervals) assert check_range_values(target, merged) @pytest.mark.unit def test_get_speech_labels_for_update(self): frame_start = 3.0 buffer_end = 6.0 cumulative_speech_labels = torch.tensor([[0.0000, 3.7600]]) vad_timestamps = torch.tensor([[0.9600, 4.8400]]) cursor_for_old_segments = 1.0 speech_labels_for_update, cumulative_speech_labels = get_speech_labels_for_update( frame_start, buffer_end, cumulative_speech_labels, vad_timestamps, cursor_for_old_segments, ) assert (speech_labels_for_update - torch.tensor([[1.0000, 3.7600]])).sum() < 1e-8 assert (cumulative_speech_labels - torch.tensor([[0.9600, 4.8400]])).sum() < 1e-8 # Check if the ranges are containing faulty values assert check_ranges(speech_labels_for_update) assert check_ranges(cumulative_speech_labels) @pytest.mark.unit def test_get_online_subsegments_from_buffer(self): torch.manual_seed(0) sample_rate = 16000 speech_labels_for_update = torch.Tensor([[0.0000, 3.7600]]) audio_buffer = torch.randn(5 * sample_rate) segment_indexes = [] window = 2.0 shift = 1.0 slice_length = int(window * sample_rate) range_target = [[0.0, 2.0], [1.0, 3.0], [2.0, 3.76]] sigs_list, sig_rangel_list, sig_indexes = get_online_subsegments_from_buffer( buffer_start=0.0, buffer_end=5.0, sample_rate=sample_rate, speech_labels_for_update=speech_labels_for_update, audio_buffer=audio_buffer, segment_indexes=segment_indexes, window=window, shift=shift, ) assert check_range_values(target=range_target, source=sig_rangel_list) for k, rg in enumerate(sig_rangel_list): signal = get_target_sig(audio_buffer, rg[0], rg[1], slice_length, sample_rate) if len(signal) < int(window * sample_rate): signal = repeat_signal(signal, len(signal), slice_length) assert len(signal) == int(slice_length), "Length mismatch" assert (np.abs(signal - sigs_list[k])).sum() < 1e-8, "Audio stream mismatch" assert (torch.tensor(sig_indexes) - torch.arange(len(range_target))).sum() < 1e-8, "Segment index mismatch" @pytest.mark.unit @pytest.mark.parametrize("frame_start", [3.0]) @pytest.mark.parametrize("segment_range_ts", [[[0.0, 2.0]]]) @pytest.mark.parametrize("gt_cursor_for_old_segments", [3.0]) @pytest.mark.parametrize("gt_cursor_index", [1]) def test_get_new_cursor_for_update_mulsegs_ex1( self, frame_start, segment_range_ts, gt_cursor_for_old_segments, gt_cursor_index ): cursor_for_old_segments, cursor_index = get_new_cursor_for_update(frame_start, segment_range_ts) assert cursor_for_old_segments == gt_cursor_for_old_segments assert cursor_index == gt_cursor_index @pytest.mark.unit @pytest.mark.parametrize("target_range", [[1.0, 4.0]]) @pytest.mark.parametrize( "source_range_list", [[[2.0, 3.0], [3.0, 4.0]], [[0.0, 2.0], [3.0, 5.0]], [[1.0, 2.0], [3.0, 4.0], [5.0, 6.0]]] ) def get_sub_range_list(self, target_range, source_range_list): sub_range_list = get_sub_range_list(target_range, source_range_list) assert sub_range_list == [[2.0, 3.0], [3.0, 4.0]] @pytest.mark.unit @pytest.mark.parametrize("source_range_list", [[[0.0, 2.0]], [[1.0, 2.0], [3.0, 4.0], [5.0, 6.0]]]) def test_tensor_to_list(self, source_range_list): a_range_tensor = torch.tensor(source_range_list) converted_list = tensor_to_list(a_range_tensor) assert source_range_list == converted_list @pytest.mark.unit @pytest.mark.parametrize( "buffer_start, buffer_end, subsegments, ind_offset, window, sample_rate", [ (0.0, 2.0, [[0.5, 1.0], [1.5, 2.0]], 0, 0.1, 16000), (0.0, 5.0, [[0.5, 2.5], [2.7, 5.0]], 0, 1.0, 16000), ], ) def test_get_online_segments_from_slices( self, buffer_start, buffer_end, subsegments, ind_offset, window, sample_rate ): sig = torch.randn(int(sample_rate * buffer_end)) ind_offset, sigs_list, sig_rangel_list, sig_indexes = get_online_segments_from_slices( sig, buffer_start, buffer_end, subsegments, ind_offset, window, sample_rate ) assert ind_offset == 2 assert len(sigs_list) == 2 assert len(sig_rangel_list) == 2 assert len(sig_indexes) == 2 class TestClusteringUtilFunctions: @pytest.mark.parametrize("p_value", [1, 5, 9]) @pytest.mark.parametrize("N", [9, 20]) @pytest.mark.parametrize("mask_method", ['binary', 'sigmoid', 'drop']) def test_get_k_neighbors_connections(self, p_value: int, N: int, mask_method: str, seed=0): torch.manual_seed(seed) random_mat = torch.rand(N, N) affinity_mat = 0.5 * (random_mat + random_mat.T) affinity_mat = affinity_mat / torch.max(affinity_mat) binarized_affinity_mat = getKneighborsConnections(affinity_mat, p_value, mask_method) if mask_method == 'binary': assert all(binarized_affinity_mat.sum(dim=0) == float(p_value)) elif mask_method == 'sigmoid': assert all(binarized_affinity_mat.sum(dim=0) <= float(p_value)) elif mask_method == 'drop': assert all(binarized_affinity_mat.sum(dim=0) <= float(p_value)) @pytest.mark.unit @pytest.mark.parametrize("Y_aggr", [torch.tensor([0, 1, 0, 1])]) @pytest.mark.parametrize("chunk_cluster_count, embeddings_per_chunk", [(2, 50)]) @pytest.mark.parametrize("window_range_list", [[[0, 1], [1, 2], [2, 3], [3, 4]]]) @pytest.mark.parametrize( "absolute_merge_mapping", [[[torch.tensor([]), torch.tensor([0, 2])], [torch.tensor([]), torch.tensor([1, 3])]]], ) @pytest.mark.parametrize("org_len", [4]) def test_unpack_labels( self, Y_aggr, window_range_list, absolute_merge_mapping, chunk_cluster_count, embeddings_per_chunk, org_len ): expected_result = Y_aggr longform_speaker_clustering = LongFormSpeakerClustering(cuda=False) output = longform_speaker_clustering.unpack_labels(Y_aggr, window_range_list, absolute_merge_mapping, org_len) assert torch.equal(output, expected_result) class TestSpeakerClustering: """ Test speaker clustering module """ @pytest.mark.unit @pytest.mark.parametrize("cuda", [True, False]) def test_offline_clus_script_save_load(self, cuda): exported_filename = 'speaker_clustering_script.pt' speaker_clustering_python = SpeakerClustering(maj_vote_spk_count=False, cuda=cuda) speaker_clustering_scripted_source = torch.jit.script(speaker_clustering_python) torch.jit.save(speaker_clustering_scripted_source, exported_filename) assert os.path.exists(exported_filename) os.remove(exported_filename) assert not os.path.exists(exported_filename) @pytest.mark.unit @pytest.mark.parametrize("cuda", [True, False]) def test_online_clus_script_save_load(self, cuda): exported_filename = 'speaker_clustering_script.pt' speaker_clustering_python = OnlineSpeakerClustering( max_num_speakers=8, max_rp_threshold=0.15, sparse_search_volume=30, history_buffer_size=150, current_buffer_size=150, cuda=cuda, ) speaker_clustering_scripted_source = torch.jit.script(speaker_clustering_python) torch.jit.save(speaker_clustering_scripted_source, exported_filename) assert os.path.exists(exported_filename) os.remove(exported_filename) assert not os.path.exists(exported_filename) @pytest.mark.run_only_on('GPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks", [1, 2, 3, 4, 5, 6, 7]) @pytest.mark.parametrize("total_sec, SSV, perturb_sigma, seed", [(30, 10, 0.1, 0)]) @pytest.mark.parametrize("jit_script", [False, True]) def test_offline_speaker_clustering(self, n_spks, total_sec, SSV, perturb_sigma, seed, jit_script, cuda=True): spk_dur = total_sec / n_spks em, ts, mc, mw, spk_ts, gt = generate_toy_data( n_spks=n_spks, spk_dur=spk_dur, perturb_sigma=perturb_sigma, torch_seed=seed ) offline_speaker_clustering = SpeakerClustering(maj_vote_spk_count=False, cuda=cuda) assert isinstance(offline_speaker_clustering, SpeakerClustering) if jit_script: offline_speaker_clustering = torch.jit.script(offline_speaker_clustering) Y_out = offline_speaker_clustering.forward_infer( embeddings_in_scales=em, timestamps_in_scales=ts, multiscale_segment_counts=mc, multiscale_weights=mw, oracle_num_speakers=-1, max_num_speakers=8, enhanced_count_thres=40, sparse_search_volume=SSV, max_rp_threshold=0.15, fixed_thres=-1.0, ) permuted_Y = stitch_cluster_labels(Y_old=gt, Y_new=Y_out) permuted_Y = permuted_Y.to(gt.device) # mc[-1] is the number of base scale segments assert len(set(permuted_Y.tolist())) == n_spks assert Y_out.shape[0] == mc[-1] assert all(permuted_Y == gt) @pytest.mark.run_only_on('CPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks", [1, 2, 3, 4, 5, 6, 7]) @pytest.mark.parametrize("total_sec, SSV, perturb_sigma, seed", [(30, 10, 0.1, 0)]) @pytest.mark.parametrize("jit_script", [False, True]) def test_offline_speaker_clustering_cpu(self, n_spks, total_sec, SSV, perturb_sigma, seed, jit_script, cuda=False): self.test_offline_speaker_clustering(n_spks, total_sec, SSV, perturb_sigma, seed, jit_script, cuda=cuda) @pytest.mark.run_only_on('CPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks", [1]) @pytest.mark.parametrize("spk_dur", [0.25, 0.5, 0.75, 1, 1.5, 2]) @pytest.mark.parametrize("SSV, enhanced_count_thres, min_samples_for_nmesc", [(5, 40, 6)]) @pytest.mark.parametrize("seed", [0]) def test_offline_speaker_clustering_very_short_cpu( self, n_spks, spk_dur, SSV, enhanced_count_thres, min_samples_for_nmesc, seed, ): em, ts, mc, mw, spk_ts, gt = generate_toy_data( n_spks=n_spks, spk_dur=spk_dur, perturb_sigma=0.1, torch_seed=seed ) offline_speaker_clustering = SpeakerClustering(maj_vote_spk_count=False, min_samples_for_nmesc=0, cuda=False) assert isinstance(offline_speaker_clustering, SpeakerClustering) Y_out = offline_speaker_clustering.forward_infer( embeddings_in_scales=em, timestamps_in_scales=ts, multiscale_segment_counts=mc, multiscale_weights=mw, oracle_num_speakers=-1, max_num_speakers=8, enhanced_count_thres=enhanced_count_thres, sparse_search_volume=SSV, max_rp_threshold=0.15, fixed_thres=-1.0, ) permuted_Y = stitch_cluster_labels(Y_old=gt, Y_new=Y_out) permuted_Y = permuted_Y.to(gt.device) # mc[-1] is the number of base scale segments assert len(set(permuted_Y.tolist())) == n_spks assert Y_out.shape[0] == mc[-1] assert all(permuted_Y == gt) @pytest.mark.run_only_on('GPU') @pytest.mark.unit @pytest.mark.parametrize("spk_dur", [0.25, 0.5, 0.75, 1, 2, 4]) @pytest.mark.parametrize("n_spks, SSV, enhanced_count_thres, min_samples_for_nmesc", [(1, 5, 40, 6)]) @pytest.mark.parametrize("seed", [0]) def test_offline_speaker_clustering_very_short_gpu( self, n_spks, spk_dur, SSV, enhanced_count_thres, min_samples_for_nmesc, seed, ): em, ts, mc, mw, spk_ts, gt = generate_toy_data( n_spks=n_spks, spk_dur=spk_dur, perturb_sigma=0.1, torch_seed=seed ) offline_speaker_clustering = SpeakerClustering(maj_vote_spk_count=False, min_samples_for_nmesc=0, cuda=True) assert isinstance(offline_speaker_clustering, SpeakerClustering) Y_out = offline_speaker_clustering.forward_infer( embeddings_in_scales=em, timestamps_in_scales=ts, multiscale_segment_counts=mc, multiscale_weights=mw, oracle_num_speakers=-1, max_num_speakers=8, enhanced_count_thres=enhanced_count_thres, sparse_search_volume=SSV, max_rp_threshold=0.15, fixed_thres=-1.0, ) permuted_Y = stitch_cluster_labels(Y_old=gt, Y_new=Y_out) permuted_Y = permuted_Y.to(gt.device) # mc[-1] is the number of base scale segments assert Y_out.shape[0] == mc[-1] assert all(permuted_Y == gt) @pytest.mark.run_only_on('CPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks, SSV, enhanced_count_thres, min_samples_for_nmesc", [(2, 5, 40, 6)]) @pytest.mark.parametrize("spk_dur, chunk_cluster_count, embeddings_per_chunk", [(120, 4, 50), (240, 4, 100)]) @pytest.mark.parametrize("seed", [0]) @pytest.mark.parametrize("jit_script", [False, True]) def test_longform_speaker_clustering_cpu( self, n_spks, spk_dur, SSV, enhanced_count_thres, min_samples_for_nmesc, chunk_cluster_count, embeddings_per_chunk, jit_script, seed, ): em, ts, mc, mw, spk_ts, gt = generate_toy_data( n_spks=n_spks, spk_dur=spk_dur, perturb_sigma=0.1, torch_seed=seed ) longform_speaker_clustering = LongFormSpeakerClustering(cuda=False) if jit_script: longform_speaker_clustering = torch.jit.script(longform_speaker_clustering) else: assert isinstance(longform_speaker_clustering, LongFormSpeakerClustering) Y_out = longform_speaker_clustering.forward_infer( embeddings_in_scales=em, timestamps_in_scales=ts, multiscale_segment_counts=mc, multiscale_weights=mw, oracle_num_speakers=-1, max_num_speakers=n_spks, enhanced_count_thres=enhanced_count_thres, sparse_search_volume=SSV, max_rp_threshold=0.15, fixed_thres=-1.0, chunk_cluster_count=chunk_cluster_count, embeddings_per_chunk=embeddings_per_chunk, ) permuted_Y = stitch_cluster_labels(Y_old=gt, Y_new=Y_out) permuted_Y = permuted_Y.to(gt.device) # mc[-1] is the number of base scale segments assert Y_out.shape[0] == mc[-1] assert all(permuted_Y == gt) @pytest.mark.run_only_on('GPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks, SSV, enhanced_count_thres, min_samples_for_nmesc", [(2, 5, 40, 6)]) @pytest.mark.parametrize("spk_dur, chunk_cluster_count, embeddings_per_chunk", [(120, 4, 50), (240, 4, 100)]) @pytest.mark.parametrize("seed", [0]) @pytest.mark.parametrize("jit_script", [False, True]) def test_longform_speaker_clustering_gpu( self, n_spks, spk_dur, SSV, enhanced_count_thres, min_samples_for_nmesc, chunk_cluster_count, embeddings_per_chunk, jit_script, seed, ): em, ts, mc, mw, spk_ts, gt = generate_toy_data( n_spks=n_spks, spk_dur=spk_dur, perturb_sigma=0.1, torch_seed=seed ) longform_speaker_clustering = LongFormSpeakerClustering(cuda=True) if jit_script: longform_speaker_clustering = torch.jit.script(longform_speaker_clustering) else: assert isinstance(longform_speaker_clustering, LongFormSpeakerClustering) Y_out = longform_speaker_clustering.forward_infer( embeddings_in_scales=em, timestamps_in_scales=ts, multiscale_segment_counts=mc, multiscale_weights=mw, oracle_num_speakers=-1, max_num_speakers=n_spks, enhanced_count_thres=enhanced_count_thres, sparse_search_volume=SSV, max_rp_threshold=0.15, fixed_thres=-1.0, chunk_cluster_count=chunk_cluster_count, embeddings_per_chunk=embeddings_per_chunk, ) permuted_Y = stitch_cluster_labels(Y_old=gt, Y_new=Y_out) permuted_Y = permuted_Y.to(gt.device) # mc[-1] is the number of base scale segments assert Y_out.shape[0] == mc[-1] assert all(permuted_Y == gt) @pytest.mark.run_only_on('GPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks", [1, 2, 3]) @pytest.mark.parametrize("total_sec, buffer_size, sigma", [(30, 30, 0.1)]) @pytest.mark.parametrize("seed", [0]) @pytest.mark.parametrize("jit_script", [False, True]) def test_online_speaker_clustering(self, n_spks, total_sec, buffer_size, sigma, seed, jit_script, cuda=True): step_per_frame = 2 spk_dur = total_sec / n_spks em, ts, mc, _, _, gt = generate_toy_data(n_spks, spk_dur=spk_dur, perturb_sigma=sigma, torch_seed=seed) em_s, ts_s = split_input_data(em, ts, mc) emb_gen = em_s[-1] segment_indexes = ts_s[-1] if cuda: device = torch.cuda.current_device() emb_gen, segment_indexes = emb_gen.to(device), segment_indexes.to(device) history_buffer_size = buffer_size current_buffer_size = buffer_size online_clus = OnlineSpeakerClustering( max_num_speakers=8, max_rp_threshold=0.15, sparse_search_volume=30, history_buffer_size=history_buffer_size, current_buffer_size=current_buffer_size, cuda=cuda, ) if jit_script: online_clus = torch.jit.script(online_clus) n_frames = int(emb_gen.shape[0] / step_per_frame) evaluation_list = [] # Simulate online speaker clustering for frame_index in range(n_frames): curr_emb = emb_gen[0 : (frame_index + 1) * step_per_frame] base_segment_indexes = torch.arange(curr_emb.shape[0]).to(curr_emb.device) # Check history_buffer_size and history labels assert ( online_clus.history_embedding_buffer_emb.shape[0] <= history_buffer_size ), "History buffer size error" assert ( online_clus.history_embedding_buffer_emb.shape[0] == online_clus.history_embedding_buffer_label.shape[0] ) # Call clustering function merged_clus_labels = online_clus.forward_infer( curr_emb=curr_emb, base_segment_indexes=base_segment_indexes, frame_index=frame_index, cuda=cuda ) # Resolve permutations assert len(merged_clus_labels) == (frame_index + 1) * step_per_frame # Resolve permutation issue by using stitch_cluster_labels function merged_clus_labels = merged_clus_labels.cpu() merged_clus_labels = stitch_cluster_labels(Y_old=gt[: len(merged_clus_labels)], Y_new=merged_clus_labels) evaluation_list.extend(list(merged_clus_labels == gt[: len(merged_clus_labels)])) assert online_clus.is_online cumul_label_acc = sum(evaluation_list) / len(evaluation_list) assert cumul_label_acc > 0.9 @pytest.mark.run_only_on('CPU') @pytest.mark.unit @pytest.mark.parametrize("n_spks, total_sec, buffer_size, sigma, seed", [(3, 30, 30, 0.1, 0)]) @pytest.mark.parametrize("jit_script", [False, True]) def test_online_speaker_clustering_cpu(self, n_spks, total_sec, buffer_size, sigma, seed, jit_script, cuda=False): self.test_online_speaker_clustering(n_spks, total_sec, buffer_size, sigma, seed, jit_script, cuda) class TestLinearSumAssignmentAlgorithm: @pytest.mark.unit def test_lsa_solver_export_test(self): cost_matrix = torch.randint(0, 10, (3, 3)) solver = LinearSumAssignmentSolver(cost_matrix) solver = torch.jit.script(solver) assert isinstance(solver, torch.jit._script.RecursiveScriptClass) @pytest.mark.unit @pytest.mark.parametrize( "cost_matrix", [torch.tensor([[7, 6, 2, 9, 2], [6, 2, 1, 3, 9], [5, 6, 8, 9, 5], [6, 8, 5, 8, 6], [9, 5, 6, 4, 7]])], ) def test_linear_sum_assignment_algorithm_cost_matrix(self, cost_matrix): """ Test the linear sum assignment algorithm with a cost matrix Compare with the scipy implementation and make sure the final cost is the same. NOTE: There could be multiple solutions with the same cost in linear sum assignment problem. This test only checks if the cost is the same. """ row_ind_nm, col_ind_nm = nemo_linear_sum_assignment(cost_matrix) row_ind_sc, col_ind_sc = scipy_linear_sum_assignment(cost_matrix.cpu().numpy()) cost_nm = sum(cost_matrix[row_ind_nm, col_ind_nm]) cost_sc = sum(cost_matrix[row_ind_sc, col_ind_sc]) assert cost_nm == cost_sc @pytest.mark.unit @pytest.mark.parametrize("seed", [0, 1]) @pytest.mark.parametrize("mat_size", [1, 2, 4, 8]) def test_linear_sum_assignment_algorithm_random_matrix(self, seed, mat_size): torch.manual_seed(seed) cost_matrix = torch.randint(0, 10, (mat_size, mat_size)) self.test_linear_sum_assignment_algorithm_cost_matrix(cost_matrix)