Object detection based on Online hard examples mining with residual network

Zhang Chao, Chen Ying
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引用次数: 1

Abstract

In order to detect objects more correctly in pictures, an object detection algorithm based on the Online hard example mining with residual network is put forward, which takes Faster R-CNN as a benchmark. The working method of Faster R-CNN based on deep learning is portrayed, and the drawback and improvement ways of the algorithm are analyzed. More specifically, a residual network is used to replace the original ZF or VGG network to obtain more effective deep convolution feature maps. Besides, in order to strengthen the generalization capacity of the learning network model, the network parameters with hard examples are regenerated during training to make the network training more effectively. Finally, results of the experiments on Pascal VOC2007, Pascal VOC2007+VOC2012 and BIT datasets indicate that compared with Faster R-CNN, our method improves detection accuracy by 3.5%, 7.1%, 6.4% severally on the three datasets.
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基于残差网络在线硬样例挖掘的目标检测
为了更准确地检测图像中的目标,以Faster R-CNN为基准,提出了一种基于残差网络在线硬例挖掘的目标检测算法。描述了基于深度学习的Faster R-CNN的工作方法,分析了算法的不足和改进途径。更具体地说,用残差网络代替原来的ZF或VGG网络,得到更有效的深度卷积特征映射。此外,为了增强学习网络模型的泛化能力,在训练过程中对带有硬样例的网络参数进行再生,使网络训练更加有效。最后,在Pascal VOC2007、Pascal VOC2007+VOC2012和BIT数据集上的实验结果表明,与Faster R-CNN相比,本文方法在三个数据集上的检测准确率分别提高了3.5%、7.1%和6.4%。
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