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Fusion of transfer learning features and its application in image classification

机译:迁移学习特征融合及其在图像分类中的应用

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Feature fusion methods have been demonstrated to be effective for many computer vision based applications. These methods generally use multiple hand-crafted features. However, in recent days, features extracted through transfer leaning procedures have been proved to be robust than the hand-crafted features in myriad applications, such as object classification and recognition. The transfer learning is a highly appreciated strategy in deep convolutional neural networks (DCNNs) due to its multifaceted benefits. It heartens us to explore the effect of fusing multiple transfer learning features of different DCNN architectures. Thus, in this work, we extract features of image statistics by exploiting three different pre-trained DCNNs through transfer learning. Then, we transform the features into a generalized subspace through a recently introduced Autoencoder network and fuse them to form intra-class invariant feature vector that is used to train a multi-class Support Vector Machine (SVM). The experimental results on various datasets, including object and action image statistics show that the fusion of multiple transfer learning features improves classification accuracy as compared to fusion of multiple hand-crafted features and usage of single component transfer learning features.
机译:特征融合方法已被证明对于许多基于计算机视觉的应用都是有效的。这些方法通常使用多个手工制作的功能。但是,近来,事实证明通过转移倾斜过程提取的特征比诸如对象分类和识别之类的多种应用中的手工特征更强大。迁移学习由于其多方面的优势,因此在深度卷积神经网络(DCNN)中是一种备受赞赏的策略。这激发了我们探索融合不同DCNN架构的多种转移学习功能的效果。因此,在这项工作中,我们通过转移学习利用三种不同的预训练DCNN来提取图像统计数据的特征。然后,我们通过最近引入的Autoencoder网络将特征转换为广义子空间,并将它们融合以形成类内不变特征向量,该特征向量用于训练多类支持向量机(SVM)。在包括目标和动作图像统计在内的各种数据集上的实验结果表明,与多个手工制作特征的融合和单个组件转移学习特征的使用相比,融合多个转移学习特征可提高分类准确性。

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