Hardware Implementation of Yolov4-tiny for Object Detection

Omar Eid, M. M. A. E. Ghany
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引用次数: 2

Abstract

The high computational power of GPUs allowed for larger networks to be used in object detection applications. However, due to the huge power consumption and inefficiency when it comes to memory access and the number of bits used to represent the data, it is difficult to use them in embedded applications. Therefore, extensive research has been conducted to use FPGAs as a highly efficient substitute for GPUs to implement deep learning algorithms. As the scale and complexity of the algorithms keep increasing each year to improve their performance, it becomes even harder to implement such algorithms on an FPGA without reusing hardware resources. In this work, we implement Yolov4-tiny on a single FPGA by applying several resource sharing and optimization techniques. Our implementation shows a decrease in power consumption that ranges from 66% to 93.5% less power when compared to software. Moreover, less hardware resources and faster inference time is achieved. When comparing with the hardware implementation of networks with similar size, our design is 6.67 times faster and uses 62.5% less energy per image.
Yolov4-tiny的目标检测硬件实现
gpu的高计算能力允许在目标检测应用中使用更大的网络。然而,由于巨大的功耗和低效率,当涉及到内存访问和用于表示数据的比特数时,很难在嵌入式应用中使用它们。因此,已经进行了广泛的研究,使用fpga作为gpu的高效替代品来实现深度学习算法。为了提高性能,算法的规模和复杂性每年都在不断增加,在不重用硬件资源的情况下在FPGA上实现这些算法变得更加困难。在这项工作中,我们通过应用多种资源共享和优化技术,在单个FPGA上实现了Yolov4-tiny。我们的实现显示,与软件相比,功耗降低了66%到93.5%。此外,实现了更少的硬件资源和更快的推理时间。与相同大小的网络的硬件实现相比,我们的设计速度快6.67倍,每张图像的能耗减少62.5%。
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