Strong Representation Learning for Weakly Supervised Object Detection

Song Yu, Li Min, Duan Weidong, He Yujie, Gou Yao, Wu Zhaoqing, Lv Yilong
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Abstract

To solve the problem that the feature maps generated by feature extraction network of traditional weakly supervised learning object detection algorithm is not strong in feature, and the mapping relationship between feature space and classification results is not strong, which restricts the performance of object detection, a weakly supervised object detection algorithm based on strong representation learning is proposed in this paper. Due to enhance the representation ability of feature maps, the algorithm weighted the channels of feature maps according to the importance of each channel, to strengthen the weight of crucial feature maps and ignore the significance of secondary feature maps. Meanwhile, a Gaussian Mixture distribution model with better classification performance was used to design the object instance classifier to enhance further the representation of the mapping between feature space and classification results, and a large-margin Gaussian Mixture (L-GM) loss was designed to increase the distance between sample categories and improve the generalization of the classifier. For verifying the effectiveness and advancement of the proposed algorithm, the performance of the proposed algorithm is compared with six classical weakly supervised target detection algorithms on VOC datasets. Experiments show that the weakly supervised target detection algorithm based on strong representation learning has outperformed other classical algorithms in average accuracy (AP) and correct location (CorLoc), with increases of 1.1%~14.6% and 2.8%~19.4%, respectively.
弱监督目标检测的强表示学习
针对传统弱监督学习对象检测算法的特征提取网络生成的特征映射特征不强、特征空间与分类结果之间的映射关系不强而制约对象检测性能的问题,提出了一种基于强表示学习的弱监督对象检测算法。为了增强特征映射的表示能力,该算法根据各通道的重要性对特征映射的通道进行加权,增强关键特征映射的权重,忽略次要特征映射的重要性。同时,采用分类性能较好的高斯混合分布模型设计目标实例分类器,进一步增强特征空间与分类结果映射的表示,设计大裕度高斯混合(L-GM)损失,增加样本类别之间的距离,提高分类器的泛化能力。为了验证所提算法的有效性和先进性,将所提算法与六种经典弱监督目标检测算法在VOC数据集上的性能进行了比较。实验表明,基于强表示学习的弱监督目标检测算法在平均准确率(AP)和正确定位(CorLoc)方面均优于其他经典算法,分别提高了1.1%~14.6%和2.8%~19.4%。
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