SOC FPGA accelerated sub-optimized binary fully convolutional neural network for robotic floor region segmentation

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Abstract

In this article, a new Binary Fully Convolutional Neural Network (B-FCN) based on Taguchi method sub-optimization for the segmentation of robotic floor regions, which can precisely distinguish floor regions in complex indoor environments is proposed. This methodology is quite suitable for robot vision in an embedded platform and the segmentation accuracy is up to 84.80% on average. A total of 6000 training datasets were used to improve the accuracy and reach convergence. On the other hand, to reach real-time computation, a PYNQ FPGA platform with heterogeneous computing acceleration was used to accelerate the proposed B-FCN architecture. Overall, robots would benefit from better navigation and route planning in our approach. The FPGA synthesis of our binarization method indicates an efficient reduction in the BRAM size to 0.5–1% and also GOPS/W is sufficiently high. Notably, the proposed faster architecture is ideal for low power embedded devices that need to solve the shortest path problem, path searching, and motion planning.

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Sun, C. C., Ahamad, A., & Liu, P. H. (2020). SOC FPGA accelerated sub-optimized binary fully convolutional neural network for robotic floor region segmentation. Sensors (Switzerland), 20(21), 1–17. https://doi.org/10.3390/s20216133

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