import numpy as np import matplotlib.pyplot as plt import librosa.display import librosa def calculate_features(y, sr): stft = np.abs(librosa.stft(y)) duration = librosa.get_duration(y=y, sr=sr) cent = librosa.feature.spectral_centroid(S=stft, sr=sr)[0] bw = librosa.feature.spectral_bandwidth(S=stft, sr=sr)[0] rolloff = librosa.feature.spectral_rolloff(S=stft, sr=sr)[0] return stft, duration, cent, bw, rolloff def plot_title(title): plt.suptitle(title, fontsize=16, fontweight="bold") def plot_spectrogram(y, sr, stft, duration, cmap="inferno"): plt.subplot(3, 1, 1) plt.imshow( librosa.amplitude_to_db(stft, ref=np.max), origin="lower", extent=[0, duration, 0, sr / 1000], aspect="auto", cmap=cmap, # Change the colormap here ) plt.colorbar(format="%+2.0f dB") plt.xlabel("Time (s)") plt.ylabel("Frequency (kHz)") plt.title("Spectrogram") def plot_waveform(y, sr, duration): plt.subplot(3, 1, 2) librosa.display.waveshow(y, sr=sr) plt.xlabel("Time (s)") plt.ylabel("Amplitude") plt.title("Waveform") def plot_features(times, cent, bw, rolloff, duration): plt.subplot(3, 1, 3) plt.plot(times, cent, label="Spectral Centroid (kHz)", color="b") plt.plot(times, bw, label="Spectral Bandwidth (kHz)", color="g") plt.plot(times, rolloff, label="Spectral Rolloff (kHz)", color="r") plt.xlabel("Time (s)") plt.title("Spectral Features") plt.legend() def analyze_audio(audio_file, save_plot_path="logs/audio_analysis.png"): y, sr = librosa.load(audio_file) stft, duration, cent, bw, rolloff = calculate_features(y, sr) plt.figure(figsize=(12, 10)) plot_title("Audio Analysis" + " - " + audio_file.split("/")[-1]) plot_spectrogram(y, sr, stft, duration) plot_waveform(y, sr, duration) plot_features(librosa.times_like(cent), cent, bw, rolloff, duration) plt.tight_layout() if save_plot_path: plt.savefig(save_plot_path, bbox_inches="tight", dpi=300) plt.close() audio_info = f"""Sample Rate: {sr}\nDuration: {( str(round(duration, 2)) + " seconds" if duration < 60 else str(round(duration / 60, 2)) + " minutes" )}\nNumber of Samples: {len(y)}\nBits per Sample: {librosa.get_samplerate(audio_file)}\nChannels: {"Mono (1)" if y.ndim == 1 else "Stereo (2)"}""" return audio_info, save_plot_path