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Optimisation of a Siamese Neural Network for Real-Time Energy Efficient Object Tracking

机译:优化暹罗神经网络实时节能对象跟踪

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In this paper the research on optimisation of visual object tracking using a Siamese neural network for embedded vision systems is presented. It was assumed that the solution shall operate in real-time, preferably for a high resolution video stream, with the lowest possible energy consumption. To meet these requirements, techniques such as the reduction of computational precision and pruning were considered. Rrevitas, a tool dedicated for optimisation and quantisation of neural networks for FPGA implementation, was used. A number of training scenarios were tested with varying levels of optimisations - from integer uniform quantisation with 16 bits to ternary and binary networks. Next, the influence of these optimisations on the tracking performance was evaluated. It was possible to reduce the size of the convolutional filters up to 10 times in relation to the original network. The obtained results indicate that using quantisation can significantly reduce the memory and computational complexity of the proposed network while still enabling precise tracking, thus allow to use it in embedded vision systems. Moreover, quantisation of weights positively affects the network training by decreasing overfitting.
机译:本文介绍了使用暹罗神经网络进行嵌入式视觉系统的视觉对象跟踪优化的研究。假设解决方案应实时工作,优选地用于高分辨率视频流,具有最低的能量消耗。为满足这些要求,考虑了减少计算精度和修剪的技术。 RRREVITAS,使用了一种专用于优化和量化用于FPGA实现的神经网络的工具。使用不同级别的优化级别测试了许多培训场景 - 从整数均匀量化,16位到三元和二进制网络。接下来,评估这些优化对跟踪性能的影响。可以将卷积滤波器的大小减小到原始网络的10倍。所获得的结果表明,使用量化可以显着降低所提出的网络的存储器和计算复杂性,同时仍然能够精确跟踪,从而允许将其使用它在嵌入式视觉系统中。此外,通过减少过度装箱来肯定地影响网络训练的量度。

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