Hardware Accelerator for Object Detection using Tiny YOLO-v3

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Date

2021

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Institute of Electrical and Electronics Engineers Inc.

Abstract

For applications that require object detection to be performed in real-time, this paper presents a custom hardware accelerator, implementing state of the art Tiny YOLO-v3 algorithm. The proposed architecture achieves a reasonable tradeoff between the speed of computation (measured in frames per second or FPS) and the hardware resources required. Each CNN layer is pipelined and parameterized to make the complete design re-configurable. The proposed hardware accelerator was synthesized using the SCL(Semi-Conductor Laboratory, India) 180 nm CMOS process and also using Vivado Xilinx software with Virtex Ultrascale+ FPGA as the target device. The pipelined architecture, along with other architectural novelties, provided a higher frame-rate of 32.1 FPS and a performance of 166.4 GOPS at 200 MHz clock frequency. © 2021 IEEE.

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Keywords

Convolutional Neural Network, Hardware accelerator, Object detection, Tiny YOLO-v3, YOLO

Citation

Proceedings of the 2021 IEEE 18th India Council International Conference, INDICON 2021, 2021, Vol., , p. -

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