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Computational and Communication Reduction Technique in Machine Learning Based Near Sensor Applications

机译:基于机器学习的近传感器应用中的计算和通信减少技术

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State-of-the-art Convolutional Neural Networks (CNN) are used to process images. In most cases, videos are streamed and processed frame by frame using a CNN. In this paper we present a two-step approach to process images in a real-life streaming environment. We exploit size-reduction and data encoding to reduce the computational and communication load. A near-sensor architecture is proposed. The final design reaches 14 EPS for the full Faster R-CNN pipeline.
机译:最新的卷积神经网络(CNN)用于处理图像。在大多数情况下,视频使用CNN逐帧传输和处理。在本文中,我们提出了一种分两步的方法来处理现实生活中的流环境中的图像。我们利用尺寸减小和数据编码来减少计算和通信负载。提出了一种近传感器架构。完整的Faster R-CNN管道的最终设计达到14 EPS。

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