Research on Target Detection algorithm based on Deep Learning Technology

Bingzhen Li, Wenzhi Jiang, Jiaojiao Gu
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引用次数: 7

Abstract

This paper summarizes the research progress of target detection using convolution neural network in recent years. These studies not only cover the design of all kinds of convolution neural network target detection algorithms, but also provide a deeper perspective for the development of computer vision. On the basis of consulting the data, this paper focuses on the representative Faster-RCNN, YOLO V3 and SSD algorithms. By reviewing their predecessor algorithms, covering the current mainstream target detection algorithms, and analyzing the technologies they use, summarize and analyze their advantages and disadvantages. And in the last part, it points out the still existing problems in target detection and the development direction in the future.
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基于深度学习技术的目标检测算法研究
综述了近年来利用卷积神经网络进行目标检测的研究进展。这些研究不仅涵盖了各种卷积神经网络目标检测算法的设计,而且为计算机视觉的发展提供了更深入的视角。在查阅数据的基础上,重点研究了具有代表性的Faster-RCNN、YOLO V3和SSD算法。通过回顾它们的前人算法,涵盖目前主流的目标检测算法,并分析它们所使用的技术,总结分析它们的优缺点。最后指出了目标检测中存在的问题和今后的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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