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The Latent Semantic Power of Labels: Improving Image Classification via Natural Language Semantic

机译:标签的潜在语义力量:通过自然语言语义改善图像分类

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In order to address the problem that numerical labels are difficult to optimize, one-hot encoding is introduced into image classification tasks, and has been widely used in current models based on CNNs. However, one-hot encoding neglects the textual semantics of class labels, which closely relate to image characteristics and contain latent connections between images. Inspired by distributional similarity based representations in Natural Language Processing society, we propose a framework by introducing Word'2Vec into classic CNN models to improve image classification performance. By mining the latent semantic power of classes labels, word vector representations participate in the classification model instead of the traditional one-hot encoding. In the evaluation experiments implemented on data sets of C1FAR-10 and CIFAR-100, a series of representative CNNs have been tested as the feature extraction component for our framework. Experimental results show that the proposed method has revealed compelling ability to improve the classification accuracy.
机译:为了解决数字标签难以优化的问题,将一热编码引入到图像分类任务中,并已在基于CNN的当前模型中广泛使用。但是,一键式编码忽略了类标签的文本语义,后者与图像特性密切相关,并且在图像之间包含潜在的联系。受自然语言处理社会中基于分布相似性表示的启发,我们提出了一个框架,通过将Word'2Vec引入经典的CNN模型中来改善图像分类性能。通过挖掘类标签的潜在语义能力,单词矢量表示将代替传统的一键编码参与分类模型。在对C1FAR-10和CIFAR-100数据集实施的评估实验中,已经测试了一系列具有代表性的CNN作为我们框架的特征提取组件。实验结果表明,该方法具有显着的提高分类精度的能力。

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