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Component Awareness in Convolutional Neural Networks

机译:卷积神经网络中的组件意识

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In this work, we investigate the ability of Convolutional Neural Networks (CNN) to infer the presence of components that comprise an image. In recent years, CNNs have achieved powerful results in classification, detection, and segmentation. However, these models learn from instance-level supervision of the detected object. In this paper, we determine if CNNs can detect objects using image-level weakly supervised labels without localization. To demonstrate that a CNN can infer awareness of objects, we evaluate a CNN's classification ability with a database constructed of Chinese characters with only character-level labeled components. We show that the CNN is able to achieve a high accuracy in identifying the presence of these components without specific knowledge of the component. Furthermore, we verify that the CNN is deducing the knowledge of the target component by comparing the results to an experiment with the component removed. This research is important for applications with large amounts of data without robust annotation such as Chinese character recognition.
机译:在这项工作中,我们研究了卷积神经网络(CNN)推断组成图像的组件的能力。近年来,CNN在分类,检测和分割方面取得了有力的成果。但是,这些模型是从对检测到的对象的实例级监督中学习的。在本文中,我们确定CNN是否可以使用图像级别的弱监督标签而无需定位来检测对象。为了证明CNN可以推断出物体的感知能力,我们使用仅包含字符级标记成分的汉字数据库评估CNN的分类能力。我们显示出CNN能够在识别这些组件的情况下实现高精度,而无需对该组件有特定的了解。此外,我们通过将结果与去除了成分的实验进行比较,来验证CNN正在推论目标成分的知识。这项研究对于具有大量数据而没有健壮注解(例如汉字识别)的应用程序非常重要。

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