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Instantaneous Stereo Depth Estimation of Real-World Stimuli with a Neuromorphic Stereo-Vision Setup

机译:具有神经形态立体视觉设置的现实世界刺激的瞬时立体深度估计

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The stereo-matching problem, i.e., matching corresponding features in two different views to reconstruct depth, is efficiently solved in biology. Yet, it remains the computational bottleneck for classical machine vision approaches. By exploiting the properties of event cameras, recently proposed Spiking Neural Network (SNN) architectures for stereo vision have the potential of simplifying the stereo-matching problem. Several solutions that combine event cameras with spike-based neuromorphic processors already exist. However, they are either simulated on digital hardware or tested on simplified stimuli. In this work, we use the Dynamic Vision Sensor 3D Human Pose Dataset (DHP19) to validate a brain-inspired event-based stereo-matching architecture implemented on a mixed-signal neuromorphic processor with real-world data. Our experiments show that this SNN architecture, composed of coincidence detectors and disparity sensitive neurons, is able to provide a coarse estimate of the input disparity instantaneously, thereby detecting the presence of a stimulus moving in depth in real-time.
机译:立体声匹配问题,即匹配两个不同视图中的相应特征来重建深度,在生物学中有效地解决。然而,它仍然是古典机器视觉方法的计算瓶颈。通过利用事件摄像机的特性,最近提出了立体视野的尖峰神经网络(SNN)架构具有简化立体匹配问题的可能性。将事件摄像机与尖峰的神经形态处理器结合使用的几种解决方案已经存在。但是,它们是在数字硬件上模拟或在简化的刺激上进行测试。在这项工作中,我们使用动态视觉传感器3D人体姿势数据集(DHP19)来验证在具有现实世界数据的混合信号神经晶体处理器上实现的基于脑机的立体匹配架构。我们的实验表明,该SNN架构由重合探测器和视差敏感神经元组成,能够瞬间提供对输入视差的粗略估计,从而检测刺激的存在在实时移动深度移动。

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