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Face Recognition for Embedded System Based on Optimized Triplet Loss Neural Network

机译:基于优化三重损失神经网络的嵌入式系统人脸识别

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Algorithms based on Convolution neural networks are significantly better than artificially designed features. Among these methods, the network trained with the triplet loss function can usually obtain better features than the direct classification, and thus get better recognition accuracy. The input of the triplet loss function consists of an anchor picture, a positive picture and a negative picture. The distance between the anchor picture and the positive picture is reduced by training, thereby achieving the purpose of face recognition. However, the parameters of the network are usually too much that it cannot be directly applied to embedded devices. In this regard, this paper proposes a solution for compression optimization based on triplet loss network. This scheme can reduce the resource overhead of the network, improve the processing speed, and realize high-precision real-time face recognition on the embedded device. This solution greatly improves the performance of the network on embedded devices, and achieves the effect of high recognition accuracy and low resource overhead.
机译:基于卷积神经网络的算法明显优于人工设计的功能。在这些方法中,用三重态损失函数训练的网络通常可以获得比直接分类更好的特征,从而获得更好的识别精度。三重态损失函数的输入包括锚图像,正图像和负图像。通过训练减少了锚图片与正图片之间的距离,从而达到了人脸识别的目的。但是,网络的参数通常太多,无法直接应用于嵌入式设备。对此,本文提出了一种基于三重态损失网络的压缩优化解决方案。该方案可以减少网络资源开销,提高处理速度,并在嵌入式设备上实现高精度的实时人脸识别。该解决方案极大地提高了嵌入式设备上网络的性能,达到了识别精度高,资源开销低的效果。

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