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Image Object Recognition via Deep Feature-Based Adaptive Joint Sparse Representation

机译:通过基于深度特征的自适应联合稀疏表示的图像对象识别

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An image object recognition approach based on deep features and adaptive weighted joint sparse representation (D-AJSR) is proposed in this paper. D-AJSR is a data-lightweight classification framework, which can classify and recognize objects well with few training samples. In D-AJSR, the convolutional neural network (CNN) is used to extract the deep features of the training samples and test samples. Then, we use the adaptive weighted joint sparse representation to identify the objects, in which the eigenvectors are reconstructed by calculating the contribution weights of each eigenvector. Aiming at the high-dimensional problem of deep features, we use the principal component analysis (PCA) method to reduce the dimensions. Lastly, combined with the joint sparse model, the public features and private features of images are extracted from the training sample feature set so as to construct the joint feature dictionary. Based on the joint feature dictionary, sparse representation-based classifier (SRC) is used to recognize the objects. Experiments on face images and remote sensing images show that D-AJSR is superior to the traditional SRC method and some other advanced methods.
机译:本文提出了一种基于深度特征和自适应加权关节稀疏表示(D-AJSR)的图像对象识别方法。 D-AJSR是一种数据轻量级分类框架,可以使用少量培训样本来分类和识别对象。在D-AJSR中,卷积神经网络(CNN)用于提取训练样本和测试样品的深度特征。然后,我们使用自适应加权关节稀疏表示来识别对象,其中通过计算每个特征向量的贡献权重来重建特征向量。针对深度特征的高维问题,我们使用主成分分析(PCA)方法来减少尺寸。最后,与联合稀疏模型​​结合,图像的公共功能和私有特征是从训练样本功能设置的,以构造联合特征词典。基于联合特征词典,基于稀疏表示的分类器(SRC)用于识别对象。面部图像和遥感图像的实验表明,D-AJSR优于传统的SRC方法和其他一些先进方法。

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