Recent neural network based Direction of Arrival (DoA) estimation algorithms have performed well on unknown number of sound sources scenarios. These algorithms are usually achieved by mapping the multi-channel audio input to the single output (i.e. overall spatial pseudo-spectrum (SPS) of all sources), that is called MISO. However, such MISO algorithms strongly depend on empirical threshold setting and the angle assumption that the angles between the sound sources are greater than a fixed angle. To address these limitations, we propose a novel multi-channel input and multiple outputs DoA network called MIMO-DoAnet. Unlike the general MISO algorithms, MIMO-DoAnet predicts the SPS coding of each sound source with the help of the informative spatial covariance matrix. By doing so, the threshold task of detecting the number of sound sources becomes an easier task of detecting whether there is a sound source in each output, and the serious interaction between sound sources disappears during inference stage. Experimental results show that MIMO-DoAnet achieves relative 18.6% and absolute 13.3%, relative 34.4% and absolute 20.2% F1 score improvement compared with the MISO baseline system in 3, 4 sources scenes. The results also demonstrate MIMO-DoAnet alleviates the threshold setting problem and solves the angle assumption problem effectively.
翻译:最近的神经网络基于 " 抵达方向(DoA) " 的最近神经网络估计算法在数量不明的可靠来源假设情况上表现良好。这些算法通常是通过对单一输出(即所有来源的空间假光谱(SPS))的多通道音频输入进行测绘来实现的,称为MISO。然而,这种MISO算法在很大程度上取决于实验性临界线的设定和以下假设:声音来源之间的角大于固定角度。为解决这些局限性,我们提议采用新的多通道输入和多种产出的DoA网络,称为MIMO-DoAnet。与一般 MISO算法不同,MIMO-DoAnet在信息性空间变量矩阵的帮助下预测每个声音源的SPS编码。通过这样做,检测声音来源数目的起点任务就比较容易,发现每个产出是否有可靠的来源,而声音来源之间的严重互动在推断阶段消失。实验结果表明,MIMO-DoAnet网络网络网络与一般的18.6%和绝对的13.3%相比,相对34.4% 和绝对空间变异矩阵的M.A 测试结果也显示测量M.2% 的基线的改进结果。