There exists an unequivocal distinction between the sound produced by a static source and that produced by a moving one, especially when the source moves towards or away from the microphone. In this paper, we propose to use this connection between audio and visual dynamics for solving two challenging tasks simultaneously, namely: (i) separating audio sources from a mixture using visual cues, and (ii) predicting the 3D visual motion of a sounding source using its separated audio. Towards this end, we present Audio Separator and Motion Predictor (ASMP) -- a deep learning framework that leverages the 3D structure of the scene and the motion of sound sources for better audio source separation. At the heart of ASMP is a 2.5D scene graph capturing various objects in the video and their pseudo-3D spatial proximities. This graph is constructed by registering together 2.5D monocular depth predictions from the 2D video frames and associating the 2.5D scene regions with the outputs of an object detector applied on those frames. The ASMP task is then mathematically modeled as the joint problem of: (i) recursively segmenting the 2.5D scene graph into several sub-graphs, each associated with a constituent sound in the input audio mixture (which is then separated) and (ii) predicting the 3D motions of the corresponding sound sources from the separated audio. To empirically evaluate ASMP, we present experiments on two challenging audio-visual datasets, viz. Audio Separation in the Wild (ASIW) and Audio Visual Event (AVE). Our results demonstrate that ASMP achieves a clear improvement in source separation quality, outperforming prior works on both datasets, while also estimating the direction of motion of the sound sources better than other methods.
翻译:静态源产生的声音与感动源产生的声音之间有明确的区别,特别是在源向麦克风移动或离开麦克风时。 在本文中,我们提议使用声频和视觉动态之间的这种联系,同时解决两项具有挑战性的任务,即:(一) 使用视觉提示将音频源与混合物分离,(二) 使用分离的音频预测声源的3D视觉运动。为此,我们展示音频分隔器和音频预测器(ASMP) -- -- 一个利用场景的3D结构和声频源运动进行更好的音频源分离的深层次学习框架。在ASMP的中心,我们提议使用2.5D场景动态图,在视频及其伪-3D空间准度中捕捉各种对象。这个图的构建方式是将2D图像源的2.5D单色深度预测与在2D视频框架上应用的物体探测器输出结果联系起来。 ASMP任务随后以数学模型为模型,作为联合问题:(一) 将2.5D图像图像图的图像图解分解到若干次视频和亚轨道上。 将每个音频解解解的图像源(我们现在的音路路段) 的计算,然后将数据解到之前的音序路路路路路路路路路路路路路路路路路的计算。