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A Lightweight Network Based on Pyramid Residual Module for Human Pose Estimation

机译:基于金字塔剩余模块的人类姿态估计的轻量级网络

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The human pose estimation is one of the most popular research fields. Its current accuracy is satisfactory in some cases, however, there exists a challenge for practical application due to the limited memory and computational efficiency in FPGAs and other hardware. We propose a lightweight module based on the pyramid residual module in this work. We change the convolution mode by using the depth-wise separable convolutions structure. Meanwhile, the channel split module and channel shuffle module are added to change the feature graph dimension. As a result, the parameters of the network are reduced effectively. We test the network on standard benchmarks MPII dataset, our method reduces about 50% of the training storage space while maintaining comparable accuracy. The complexity is simplified from 9 GFLOPs to 3 GFLOPs.
机译:人类姿势估计是最受欢迎的研究领域之一。 在某些情况下,其当前的准确性令人满意,但是,由于FPGA和其他硬件中的存储器和计算效率有限,实际应用存在挑战。 我们提出了一种基于这项工作的金字塔残余模块的轻量级模块。 我们使用深度明智的可分离卷积结构来更改卷积模式。 同时,添加了通道分离模块和通道Shuffle模块以更改特征图尺寸。 结果,网络的参数有效减少。 我们在标准基准测试网络上测试网络,我们的方法在维持可比准确度的同时减少了培训存储空间的约50%。 复杂性从9 GFLOPS简化为3 GFLOPS。

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