CVLGIVJul 1, 2020

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

arXiv:2007.00491v17 citations
AI Analysis

This work addresses the problem of high energy consumption and computational demands for object tracking in embedded systems, representing an incremental improvement through optimization of existing methods.

The paper tackled optimizing a Siamese neural network for real-time, energy-efficient object tracking in embedded vision systems by applying quantization and pruning techniques, achieving up to a 10x reduction in convolutional filter size while maintaining precise tracking performance.

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. Brevitas, 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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes