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- #include <opencv2/core.hpp>
- #include <opencv2/videoio.hpp>
- #include <opencv2/highgui.hpp>
- #include <opencv2/imgproc.hpp>
- #include <opencv2/dnn.hpp>
- #include <iostream>
- #include <vector>
- #include <string>
- #include <unordered_map>
- #include <cmath>
- #include <random>
- #include <numeric>
- using namespace cv;
- using namespace std;
- class FilterbankFeatures {
- // Initializes pre-processing class. Default values are the values used by the Jasper
- // architecture for pre-processing. For more details, refer to the paper here:
- // https://arxiv.org/abs/1904.03288
- private:
- int sample_rate = 16000;
- double window_size = 0.02;
- double window_stride = 0.01;
- int win_length = static_cast<int>(sample_rate * window_size); // Number of samples in window
- int hop_length = static_cast<int>(sample_rate * window_stride); // Number of steps to advance between frames
- int n_fft = 512; // Size of window for STFT
- // Parameters for filterbanks calculation
- int n_filt = 64;
- double lowfreq = 0.;
- double highfreq = sample_rate / 2;
- public:
- // Mel filterbanks preparation
- double hz_to_mel(double frequencies)
- {
- //Converts frequencies from hz to mel scale
- // Fill in the linear scale
- double f_min = 0.0;
- double f_sp = 200.0 / 3;
- double mels = (frequencies - f_min) / f_sp;
- // Fill in the log-scale part
- double min_log_hz = 1000.0; // beginning of log region (Hz)
- double min_log_mel = (min_log_hz - f_min) / f_sp; // same (Mels)
- double logstep = std::log(6.4) / 27.0; // step size for log region
- if (frequencies >= min_log_hz)
- {
- mels = min_log_mel + std::log(frequencies / min_log_hz) / logstep;
- }
- return mels;
- }
- vector<double> mel_to_hz(vector<double>& mels)
- {
- // Converts frequencies from mel to hz scale
- // Fill in the linear scale
- double f_min = 0.0;
- double f_sp = 200.0 / 3;
- vector<double> freqs;
- for (size_t i = 0; i < mels.size(); i++)
- {
- freqs.push_back(f_min + f_sp * mels[i]);
- }
- // And now the nonlinear scale
- double min_log_hz = 1000.0; // beginning of log region (Hz)
- double min_log_mel = (min_log_hz - f_min) / f_sp; // same (Mels)
- double logstep = std::log(6.4) / 27.0; // step size for log region
- for(size_t i = 0; i < mels.size(); i++)
- {
- if (mels[i] >= min_log_mel)
- {
- freqs[i] = min_log_hz * exp(logstep * (mels[i] - min_log_mel));
- }
- }
- return freqs;
- }
- vector<double> mel_frequencies(int n_mels, double fmin, double fmax)
- {
- // Calculates n mel frequencies between 2 frequencies
- double min_mel = hz_to_mel(fmin);
- double max_mel = hz_to_mel(fmax);
- vector<double> mels;
- double step = (max_mel - min_mel) / (n_mels - 1);
- for(double i = min_mel; i < max_mel; i += step)
- {
- mels.push_back(i);
- }
- mels.push_back(max_mel);
- vector<double> res = mel_to_hz(mels);
- return res;
- }
- vector<vector<double>> mel(int n_mels, double fmin, double fmax)
- {
- // Generates mel filterbank matrix
- double num = 1 + n_fft / 2;
- vector<vector<double>> weights(n_mels, vector<double>(static_cast<int>(num), 0.));
- // Center freqs of each FFT bin
- vector<double> fftfreqs;
- double step = (sample_rate / 2) / (num - 1);
- for(double i = 0; i <= sample_rate / 2; i += step)
- {
- fftfreqs.push_back(i);
- }
- // 'Center freqs' of mel bands - uniformly spaced between limits
- vector<double> mel_f = mel_frequencies(n_mels + 2, fmin, fmax);
- vector<double> fdiff;
- for(size_t i = 1; i < mel_f.size(); ++i)
- {
- fdiff.push_back(mel_f[i]- mel_f[i - 1]);
- }
- vector<vector<double>> ramps(mel_f.size(), vector<double>(fftfreqs.size()));
- for (size_t i = 0; i < mel_f.size(); ++i)
- {
- for (size_t j = 0; j < fftfreqs.size(); ++j)
- {
- ramps[i][j] = mel_f[i] - fftfreqs[j];
- }
- }
- double lower, upper, enorm;
- for (int i = 0; i < n_mels; ++i)
- {
- // using Slaney-style mel which is scaled to be approx constant energy per channel
- enorm = 2./(mel_f[i + 2] - mel_f[i]);
- for (int j = 0; j < static_cast<int>(num); ++j)
- {
- // lower and upper slopes for all bins
- lower = (-1) * ramps[i][j] / fdiff[i];
- upper = ramps[i + 2][j] / fdiff[i + 1];
- weights[i][j] = max(0., min(lower, upper)) * enorm;
- }
- }
- return weights;
- }
- // STFT preparation
- vector<double> pad_window_center(vector<double>&data, int size)
- {
- // Pad the window out to n_fft size
- int n = static_cast<int>(data.size());
- int lpad = static_cast<int>((size - n) / 2);
- vector<double> pad_array;
- for(int i = 0; i < lpad; ++i)
- {
- pad_array.push_back(0.);
- }
- for(size_t i = 0; i < data.size(); ++i)
- {
- pad_array.push_back(data[i]);
- }
- for(int i = 0; i < lpad; ++i)
- {
- pad_array.push_back(0.);
- }
- return pad_array;
- }
- vector<vector<double>> frame(vector<double>& x)
- {
- // Slices a data array into overlapping frames.
- int n_frames = static_cast<int>(1 + (x.size() - n_fft) / hop_length);
- vector<vector<double>> new_x(n_fft, vector<double>(n_frames));
- for (int i = 0; i < n_fft; ++i)
- {
- for (int j = 0; j < n_frames; ++j)
- {
- new_x[i][j] = x[i + j * hop_length];
- }
- }
- return new_x;
- }
- vector<double> hanning()
- {
- // https://en.wikipedia.org/wiki/Window_function#Hann_and_Hamming_windows
- vector<double> window_tensor;
- for (int j = 1 - win_length; j < win_length; j+=2)
- {
- window_tensor.push_back(1 - (0.5 * (1 - cos(CV_PI * j / (win_length - 1)))));
- }
- return window_tensor;
- }
- vector<vector<double>> stft_power(vector<double>& y)
- {
- // Short Time Fourier Transform. The STFT represents a signal in the time-frequency
- // domain by computing discrete Fourier transforms (DFT) over short overlapping windows.
- // https://en.wikipedia.org/wiki/Short-time_Fourier_transform
- // Pad the time series so that frames are centered
- vector<double> new_y;
- int num = int(n_fft / 2);
- for (int i = 0; i < num; ++i)
- {
- new_y.push_back(y[num - i]);
- }
- for (size_t i = 0; i < y.size(); ++i)
- {
- new_y.push_back(y[i]);
- }
- for (size_t i = y.size() - 2; i >= y.size() - num - 1; --i)
- {
- new_y.push_back(y[i]);
- }
- // Compute a window function
- vector<double> window_tensor = hanning();
- // Pad the window out to n_fft size
- vector<double> fft_window = pad_window_center(window_tensor, n_fft);
- // Window the time series
- vector<vector<double>> y_frames = frame(new_y);
- // Multiply on fft_window
- for (size_t i = 0; i < y_frames.size(); ++i)
- {
- for (size_t j = 0; j < y_frames[0].size(); ++j)
- {
- y_frames[i][j] *= fft_window[i];
- }
- }
- // Transpose frames for computing stft
- vector<vector<double>> y_frames_transpose(y_frames[0].size(), vector<double>(y_frames.size()));
- for (size_t i = 0; i < y_frames[0].size(); ++i)
- {
- for (size_t j = 0; j < y_frames.size(); ++j)
- {
- y_frames_transpose[i][j] = y_frames[j][i];
- }
- }
- // Short Time Fourier Transform
- // and get power of spectrum
- vector<vector<double>> spectrum_power(y_frames_transpose[0].size() / 2 + 1 );
- for (size_t i = 0; i < y_frames_transpose.size(); ++i)
- {
- Mat dstMat;
- dft(y_frames_transpose[i], dstMat, DFT_COMPLEX_OUTPUT);
- // we need only the first part of the spectrum, the second part is symmetrical
- for (int j = 0; j < static_cast<int>(y_frames_transpose[0].size()) / 2 + 1; ++j)
- {
- double power_re = dstMat.at<double>(2 * j) * dstMat.at<double>(2 * j);
- double power_im = dstMat.at<double>(2 * j + 1) * dstMat.at<double>(2 * j + 1);
- spectrum_power[j].push_back(power_re + power_im);
- }
- }
- return spectrum_power;
- }
- Mat calculate_features(vector<double>& x)
- {
- // Calculates filterbank features matrix.
- // Do preemphasis
- std::default_random_engine generator;
- std::normal_distribution<double> normal_distr(0, 1);
- double dither = 1e-5;
- for(size_t i = 0; i < x.size(); ++i)
- {
- x[i] += dither * static_cast<double>(normal_distr(generator));
- }
- double preemph = 0.97;
- for (size_t i = x.size() - 1; i > 0; --i)
- {
- x[i] -= preemph * x[i-1];
- }
- // Calculate Short Time Fourier Transform and get power of spectrum
- auto spectrum_power = stft_power(x);
- vector<vector<double>> filterbanks = mel(n_filt, lowfreq, highfreq);
- // Calculate log of multiplication of filterbanks matrix on spectrum_power matrix
- vector<vector<double>> x_stft(filterbanks.size(), vector<double>(spectrum_power[0].size(), 0));
- for (size_t i = 0; i < filterbanks.size(); ++i)
- {
- for (size_t j = 0; j < filterbanks[0].size(); ++j)
- {
- for (size_t k = 0; k < spectrum_power[0].size(); ++k)
- {
- x_stft[i][k] += filterbanks[i][j] * spectrum_power[j][k];
- }
- }
- for (size_t k = 0; k < spectrum_power[0].size(); ++k)
- {
- x_stft[i][k] = std::log(x_stft[i][k] + 1e-20);
- }
- }
- // normalize data
- auto elments_num = x_stft[0].size();
- for(size_t i = 0; i < x_stft.size(); ++i)
- {
- double x_mean = std::accumulate(x_stft[i].begin(), x_stft[i].end(), 0.) / elments_num; // arithmetic mean
- double x_std = 0; // standard deviation
- for(size_t j = 0; j < elments_num; ++j)
- {
- double subtract = x_stft[i][j] - x_mean;
- x_std += subtract * subtract;
- }
- x_std /= elments_num;
- x_std = sqrt(x_std) + 1e-10; // make sure x_std is not zero
- for(size_t j = 0; j < elments_num; ++j)
- {
- x_stft[i][j] = (x_stft[i][j] - x_mean) / x_std; // standard score
- }
- }
- Mat calculate_features(static_cast<int>(x_stft.size()), static_cast<int>(x_stft[0].size()), CV_32F);
- for(int i = 0; i < calculate_features.size[0]; ++i)
- {
- for(int j = 0; j < calculate_features.size[1]; ++j)
- {
- calculate_features.at<float>(i, j) = static_cast<float>(x_stft[i][j]);
- }
- }
- return calculate_features;
- }
- };
- class Decoder {
- // Used for decoding the output of jasper model
- private:
- unordered_map<int, char> labels_map = fillMap();
- int blank_id = 28;
- public:
- unordered_map<int, char> fillMap()
- {
- vector<char> labels={' ','a','b','c','d','e','f','g','h','i','j','k','l','m','n','o','p'
- ,'q','r','s','t','u','v','w','x','y','z','\''};
- unordered_map<int, char> map;
- for(int i = 0; i < static_cast<int>(labels.size()); ++i)
- {
- map[i] = labels[i];
- }
- return map;
- }
- string decode(Mat& x)
- {
- // Takes output of Jasper model and performs ctc decoding algorithm to
- // remove duplicates and special symbol. Returns prediction
- vector<int> prediction;
- for(int i = 0; i < x.size[1]; ++i)
- {
- double maxEl = -1e10;
- int ind = 0;
- for(int j = 0; j < x.size[2]; ++j)
- {
- if (maxEl <= x.at<float>(0, i, j))
- {
- maxEl = x.at<float>(0, i, j);
- ind = j;
- }
- }
- prediction.push_back(ind);
- }
- // CTC decoding procedure
- vector<double> decoded_prediction = {};
- int previous = blank_id;
- for(int i = 0; i < static_cast<int>(prediction.size()); ++i)
- {
- if (( prediction[i] != previous || previous == blank_id) && prediction[i] != blank_id)
- {
- decoded_prediction.push_back(prediction[i]);
- }
- previous = prediction[i];
- }
- string hypotheses = {};
- for(size_t i = 0; i < decoded_prediction.size(); ++i)
- {
- auto it = labels_map.find(static_cast<char>(decoded_prediction[i]));
- if (it != labels_map.end())
- hypotheses.push_back(it->second);
- }
- return hypotheses;
- }
- };
- static string predict(Mat& features, dnn::Net net, Decoder decoder)
- {
- // Passes the features through the Jasper model and decodes the output to english transcripts.
- // expand 2d features matrix to 3d
- vector<int> sizes = {1, static_cast<int>(features.size[0]),
- static_cast<int>(features.size[1])};
- features = features.reshape(0, sizes);
- // make prediction
- net.setInput(features);
- Mat output = net.forward();
- // decode output to transcript
- auto prediction = decoder.decode(output);
- return prediction;
- }
- static int readAudioFile(vector<double>& inputAudio, string file, int audioStream)
- {
- VideoCapture cap;
- int samplingRate = 16000;
- vector<int> params { CAP_PROP_AUDIO_STREAM, audioStream,
- CAP_PROP_VIDEO_STREAM, -1,
- CAP_PROP_AUDIO_DATA_DEPTH, CV_32F,
- CAP_PROP_AUDIO_SAMPLES_PER_SECOND, samplingRate
- };
- cap.open(file, CAP_ANY, params);
- if (!cap.isOpened())
- {
- cerr << "Error : Can't read audio file: '" << file << "' with audioStream = " << audioStream << endl;
- return -1;
- }
- const int audioBaseIndex = (int)cap.get(CAP_PROP_AUDIO_BASE_INDEX);
- vector<double> frameVec;
- Mat frame;
- for (;;)
- {
- if (cap.grab())
- {
- cap.retrieve(frame, audioBaseIndex);
- frameVec = frame;
- inputAudio.insert(inputAudio.end(), frameVec.begin(), frameVec.end());
- }
- else
- {
- break;
- }
- }
- return samplingRate;
- }
- static int readAudioMicrophone(vector<double>& inputAudio, int microTime)
- {
- VideoCapture cap;
- int samplingRate = 16000;
- vector<int> params { CAP_PROP_AUDIO_STREAM, 0,
- CAP_PROP_VIDEO_STREAM, -1,
- CAP_PROP_AUDIO_DATA_DEPTH, CV_32F,
- CAP_PROP_AUDIO_SAMPLES_PER_SECOND, samplingRate
- };
- cap.open(0, CAP_ANY, params);
- if (!cap.isOpened())
- {
- cerr << "Error: Can't open microphone" << endl;
- return -1;
- }
- const int audioBaseIndex = (int)cap.get(CAP_PROP_AUDIO_BASE_INDEX);
- vector<double> frameVec;
- Mat frame;
- if (microTime <= 0)
- {
- cerr << "Error: Duration of audio chunk must be > 0" << endl;
- return -1;
- }
- size_t sizeOfData = static_cast<size_t>(microTime * samplingRate);
- while (inputAudio.size() < sizeOfData)
- {
- if (cap.grab())
- {
- cap.retrieve(frame, audioBaseIndex);
- frameVec = frame;
- inputAudio.insert(inputAudio.end(), frameVec.begin(), frameVec.end());
- }
- else
- {
- cerr << "Error: Grab error" << endl;
- break;
- }
- }
- return samplingRate;
- }
- int main(int argc, char** argv)
- {
- const String keys =
- "{help h usage ? | | This script runs Jasper Speech recognition model }"
- "{input_file i | | Path to input audio file. If not specified, microphone input will be used }"
- "{audio_duration t | 15 | Duration of audio chunk to be captured from microphone }"
- "{audio_stream a | 0 | CAP_PROP_AUDIO_STREAM value }"
- "{show_spectrogram s | false | Show a spectrogram of the input audio: true / false / 1 / 0 }"
- "{model m | jasper.onnx | Path to the onnx file of Jasper. You can download the converted onnx model "
- "from https://drive.google.com/drive/folders/1wLtxyao4ItAg8tt4Sb63zt6qXzhcQoR6?usp=sharing}"
- "{backend b | dnn::DNN_BACKEND_DEFAULT | Select a computation backend: "
- "dnn::DNN_BACKEND_DEFAULT, "
- "dnn::DNN_BACKEND_INFERENCE_ENGINE, "
- "dnn::DNN_BACKEND_OPENCV }"
- "{target t | dnn::DNN_TARGET_CPU | Select a target device: "
- "dnn::DNN_TARGET_CPU, "
- "dnn::DNN_TARGET_OPENCL, "
- "dnn::DNN_TARGET_OPENCL_FP16 }"
- ;
- CommandLineParser parser(argc, argv, keys);
- if (parser.has("help"))
- {
- parser.printMessage();
- return 0;
- }
- // Load Network
- dnn::Net net = dnn::readNetFromONNX(parser.get<std::string>("model"));
- net.setPreferableBackend(parser.get<int>("backend"));
- net.setPreferableTarget(parser.get<int>("target"));
- // Get audio
- vector<double>inputAudio = {};
- int samplingRate = 0;
- if (parser.has("input_file"))
- {
- string audio = samples::findFile(parser.get<std::string>("input_file"));
- samplingRate = readAudioFile(inputAudio, audio, parser.get<int>("audio_stream"));
- }
- else
- {
- samplingRate = readAudioMicrophone(inputAudio, parser.get<int>("audio_duration"));
- }
- if ((inputAudio.size() == 0) || samplingRate <= 0)
- {
- cerr << "Error: problems with audio reading, check input arguments" << endl;
- return -1;
- }
- if (inputAudio.size() / samplingRate < 6)
- {
- cout << "Warning: For predictable network performance duration of audio must exceed 6 sec."
- " Audio will be extended with zero samples" << endl;
- for(int i = static_cast<int>(inputAudio.size()) - 1; i < samplingRate * 6; ++i)
- {
- inputAudio.push_back(0);
- }
- }
- // Calculate features
- FilterbankFeatures filter;
- auto calculated_features = filter.calculate_features(inputAudio);
- // Show spectogram if required
- if (parser.get<bool>("show_spectrogram") == true)
- {
- Mat spectogram;
- normalize(calculated_features, spectogram, 0, 255, NORM_MINMAX, CV_8U);
- applyColorMap(spectogram, spectogram, COLORMAP_INFERNO);
- imshow("spectogram", spectogram);
- waitKey(0);
- }
- Decoder decoder;
- string prediction = predict(calculated_features, net, decoder);
- for( auto &transcript: prediction)
- {
- cout << transcript;
- }
- return 0;
- }
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