We investigate which loss functions provide better separations via benchmarking an extensive set of those for music source separation. To that end, we first survey the most representative audio source separation losses we identified, to later consistently benchmark them in a controlled experimental setup. We also explore using such losses as evaluation metrics, via cross-correlating them with the results of a subjective test. Based on the observation that the standard signal-to-distortion ratio metric can be misleading in some scenarios, we study alternative evaluation metrics based on the considered losses.
翻译:我们调查的是哪些损失功能通过确定一系列广泛的音乐源分离标准来提供更好的分离。为此目的,我们首先调查我们所查明的最有代表性的音频源分离损失,然后在受控制的试验装置中始终如一地衡量这些损失。我们还探索使用诸如评价指标等损失,将它们与主观测试的结果交叉联系起来。基于标准信号对扭曲比率指标在某些情景中可能误导的观点,我们根据考虑的损失研究替代评价指标。