29 using namespace kaldi;
33 "Cluster utterances by similarity score, used in diarization.\n" 34 "Takes a table of score matrices indexed by recording, with the\n" 35 "rows/columns corresponding to the utterances of that recording in\n" 36 "sorted order and a reco2utt file that contains the mapping from\n" 37 "recordings to utterances, and outputs a list of labels in the form\n" 38 "<utt> <label>. Clustering is done using agglomerative hierarchical\n" 39 "clustering with a score threshold as stop criterion. By default, the\n" 40 "program reads in similarity scores, but with --read-costs=true\n" 41 "the scores are interpreted as costs (i.e. a smaller value indicates\n" 42 "utterance similarity).\n" 43 "Usage: agglomerative-cluster [options] <scores-rspecifier> " 44 "<reco2utt-rspecifier> <labels-wspecifier>\n" 46 " agglomerative-cluster ark:scores.ark ark:reco2utt \n" 47 " ark,t:labels.txt\n";
50 std::string reco2num_spk_rspecifier;
51 BaseFloat threshold = 0.0, max_spk_fraction = 1.0;
52 bool read_costs =
false;
53 int32 first_pass_max_utterances = std::numeric_limits<int16>::max();
55 po.Register(
"reco2num-spk-rspecifier", &reco2num_spk_rspecifier,
56 "If supplied, clustering creates exactly this many clusters for each" 57 " recording and the option --threshold is ignored.");
58 po.Register(
"threshold", &threshold,
"Merge clusters if their distance" 59 " is less than this threshold.");
60 po.Register(
"read-costs", &read_costs,
"If true, the first" 61 " argument is interpreted as a matrix of costs rather than a" 62 " similarity matrix.");
63 po.Register(
"first-pass-max-utterances", &first_pass_max_utterances,
64 "If the number of utterances is larger than first-pass-max-utterances," 65 " then clustering is done in two passes. In the first pass, input points" 66 " are divided into contiguous subsets of size first-pass-max-utterances" 67 " and each subset is clustered separately. In the second pass, the first" 68 " pass clusters are merged into the final set of clusters.");
69 po.Register(
"max-spk-fraction", &max_spk_fraction,
"Merge clusters if the" 70 " total fraction of utterances in them is less than this threshold." 71 " This is active only when reco2num-spk-rspecifier is supplied and" 72 " 1.0 / num-spk <= max-spk-fraction <= 1.0.");
76 if (po.NumArgs() != 3) {
81 std::string scores_rspecifier = po.GetArg(1),
82 reco2utt_rspecifier = po.GetArg(2),
83 label_wspecifier = po.GetArg(3);
91 threshold = -threshold;
92 for (; !scores_reader.Done(); scores_reader.Next()) {
93 std::string reco = scores_reader.Key();
101 std::vector<std::string> uttlist = reco2utt_reader.Value(reco);
102 std::vector<int32> spk_ids;
103 if (reco2num_spk_rspecifier.size()) {
104 int32 num_speakers = reco2num_spk_reader.Value(reco);
105 if (1.0 / num_speakers <= max_spk_fraction && max_spk_fraction <= 1.0)
107 num_speakers, first_pass_max_utterances,
108 max_spk_fraction, &spk_ids);
111 num_speakers, first_pass_max_utterances,
117 for (int32
i = 0;
i < spk_ids.size();
i++)
118 label_writer.Write(uttlist[
i], spk_ids[i]);
122 }
catch(
const std::exception &e) {
123 std::cerr << e.what();
This code computes Goodness of Pronunciation (GOP) and extracts phone-level pronunciation feature for...
A templated class for writing objects to an archive or script file; see The Table concept...
Allows random access to a collection of objects in an archive or script file; see The Table concept...
The class ParseOptions is for parsing command-line options; see Parsing command-line options for more...
void Scale(Real alpha)
Multiply each element with a scalar value.
A templated class for reading objects sequentially from an archive or script file; see The Table conc...
void AgglomerativeCluster(const Matrix< BaseFloat > &costs, BaseFloat threshold, int32 min_clusters, int32 first_pass_max_points, BaseFloat max_cluster_fraction, std::vector< int32 > *assignments_out)
This is the function that is called to perform the agglomerative clustering.