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Fusion CNN Based on Feature Selection for Crime Scene Investigation Image Classification

机译:基于犯罪现场调查图像分类的特征选择的融合CNN

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Crime Scene Investigation images have many semantic categories and complex image contents. The Convolution Neural Network (CNN) feature cannot express the uniformity of image content and high dimensional features can lead to redundancy of feature vectors in CNN. In the circumstance it is difficult to use CNN to process crime scene investigation images. To solve the above problems, we propose a fusion CNN algorithm based on feature selection for the classification of crime scene investigation images. In this paper, we build the fusion CNN features to enhance the ability of representation by fusing the convolutional layer with the fully connected layer. Then we select the fusion features with Laplacian score and label mutual information. Finally, we use the obtained features to train Support Vector Machine (SVM) classifier on the Crime Scene Investigation Images Database (CSID). Experiments show that the average classification accuracy of the proposed method can reach 93.67%.
机译:犯罪现场调查图像有许多语义类别和复杂的图像内容。卷积神经网络(CNN)特征不能表达图像内容的均匀性,并且高维特征可以导致CNN中的特征向量的冗余。在这种情况下,难以使用CNN处理犯罪现场调查图像。为了解决上述问题,我们提出了一种基于犯罪现场调查图像分类的特征选择的融合CNN算法。在本文中,我们通过将卷积层与完全连接的层融合来构建融合CNN功能以增强表示的能力。然后我们选择具有Laplacian分数和标签相互信息的融合功能。最后,我们使用所获得的功能在犯罪现场调查图像数据库(CSID)上培训支持向量机(SVM)分类器。实验表明,所提出的方法的平均分类精度可达93.67%。

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