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Space-Time Event Clouds for Gesture Recognition: From RGB Cameras to Event Cameras

机译:用于手势识别的时空事件云:从RGB相机到事件摄像机

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The recently developed event cameras can directly sense the motion in the scene by generating an asynchronous sequence of events, i.e., event streams, where each individual event (x, y, t) corresponds to the space-time location when a pixel sensor captures an intensity change. Compared with RGB cameras, event cameras are frameless but can capture much faster motion, therefore have great potential for recognizing gestures of fast motions. To deal with the unique output of event cameras, previous methods often treat event streams as time sequences, thus do not fully explore the space-time sparsity of the event stream data. In this work, we treat the event stream as a set of 3D points in space-time, i.e., space-time event clouds. To analyze event clouds and recognize gestures, we propose to leverage PointNet, a neural network architecture originally designed for matching and recognizing 3D point clouds. We further adapt PointNet to cater to event clouds for real-time gesture recognition. On the benchmark dataset of event camera based gesture recognition, i.e., IBM DVS128 Gesture dataset, our proposed method achieves a high accuracy of 97.08% and performs the best among existing methods.
机译:最近开发的事件摄像机可以通过生成事件的异步序列,即事件流的异步序列直接感测场景中的运动,其中当像素传感器捕获时,每个单独的事件(x,y,t)对应于时空位置强度变化。与RGB相机相比,事件相机无框架,但可以捕获更快的运动,因此具有识别快速运动手势的巨大潜力。为了处理事件摄像机的独特输出,之前的方法通常将事件流视为时间序列,因此没有完全探索事件流数据的时空稀疏性。在这项工作中,我们将事件流视为时空中的一组3D点,即时空事件云。要分析活动云并识别手势,我们建议利用PileTNET,是最初设计用于匹配和识别3D点云的神经网络架构。我们进一步调整PointNet来迎合事件云进行实时手势识别。在基于事件摄像机的手势识别的基准数据集上,即IBM DVS128手势数据集,我们所提出的方法高精度为97.08 %并在现有方法中执行最佳。

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