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Optimization and Comparative Analysis of YOLOV3 Target Detection Method Based on Lightweight Network Structure

机译:基于轻量级网络结构的YOLOV3目标检测方法的优化与对比分析

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As an open source target detection network, YOLOV3 has clear superiority in terms of accuracy and speed. However, the hardware configuration requirements are relatively high in actual applications, and the detection effect and real-time performance of Tiny-Yolov3 for embedded platforms are difficult to achieve expectations. In order to solve these problems, an improved YOLOV3 model optimization method based on a lightweight network structure is proposed, using lightweight network structure as the backbone network to replace the original convolution structure and residual module in YOLOV3. The size of the model network is reduced. The problem of high computational complexity and slow inference speed appearing on the embedded end is solved based on this targeted optimization. In case of slight loss of detection performance, this method can significantly reduce the model size and improving the detection speed compared with traditional methods on multiple public data sets.
机译:作为开源目标检测网络,YOLOV3在准确性和速度方面均具有明显的优势。但是,实际应用中对硬件配置的要求较高,Tiny-Yolov3在嵌入式平台上的检测效果和实时性能难以达到预期。为了解决这些问题,提出了一种改进的基于轻量级网络结构的YOLOV3模型优化方法,以轻量级网络结构为骨干网络,代替了YOLOV3中原有的卷积结构和残差模块。模型网络的大小减小了。基于该目标优化,解决了嵌入式端出现的计算复杂度高,推理速度慢的问题。在检测性能略有下降的情况下,与传统方法相比,该方法可以在多个公共数据集上显着减小模型大小并提高检测速度。

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