Shadow-based Hand Gesture Recognition in one Packet

S. Hazra, Martina Brachmann, Thiemo Voig
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Abstract

The ubiquity of wirelessly connected sensing devices in IoT applications provides the opportunity to enable various types of interaction with our digitally connected environment. Currently, low processing capabilities and high energy costs for communication limit the use of energy-constrained devices for this purpose. In this paper, we address this challenge by exploring the new possibilities highly capable deep neural network classifiers present. To reduce the energy consumption for transferring continuously sampled data, we propose to compress the sensed data and perform classification at the edge. We evaluate several compression methods in the context of a shadow-based hand gesture detection application, where the classification is performed using a convolutional neural network. We show that simple data reduction methods allow us to compress the sensed data into a single IEEE 802.15.4 packet while maintaining a classification accuracy of 93%. We further show the generality of our compression methods in an audio-based interaction scenario.
一个包中基于阴影的手势识别
物联网应用中无处不在的无线连接传感设备提供了与数字连接环境进行各种类型交互的机会。目前,通信的低处理能力和高能源成本限制了为此目的使用能量受限设备。在本文中,我们通过探索高性能深度神经网络分类器的新可能性来解决这一挑战。为了减少连续采样数据传输的能量消耗,我们提出对感知数据进行压缩,并在边缘进行分类。我们在基于阴影的手势检测应用中评估了几种压缩方法,其中使用卷积神经网络进行分类。我们表明,简单的数据约简方法允许我们将感测数据压缩到单个IEEE 802.15.4数据包中,同时保持93%的分类精度。我们进一步展示了我们的压缩方法在基于音频的交互场景中的通用性。
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