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Generic Image Classification by Web Image Mining Experiments Using a Large Number of Web Images

机译:通过使用大量Web图像的Web图像挖掘实验进行的通用图像分类

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摘要

Thanks to the recent rapid spread of digital imaging devices, the demand for generic image recognition of various kinds of scenes becomes greater. It is, however, hard to collect various kinds of training images for recognition of various kinds of scenes so far. To solve this problem, we have proposed a generic image classification system with an automatic knowledge acquisition mechanism from the World Wide Web (WWW). We call this knowledge acquisition from WWW "Web image mining". The system gathers a large number of images related to given class keywords from the Web and classifies an unknown image into one of the classes corresponding to the class keywords using gathered images as training ones. In this report, we describe how to gather more than one thousand images per class and the experimental results of image classification by using a large number of training images.
机译:由于数字成像设备最近的快速普及,对各种场景的通用图像识别的需求变得更大。然而,到目前为止,难以收集各种训练图像以识别各种场景。为了解决这个问题,我们提出了一种通用的图像分类系统,该系统具有来自万维网(WWW)的自动知识获取机制。我们称这种来自WWW的知识获取为“ Web图像挖掘”。该系统从网络上收集与给定类别关键字相关的大量图像,并使用收集的图像作为训练图像将未知图像分类为与类别关键字相对应的类别之一。在这份报告中,我们描述了如何通过使用大量的训练图像来收集每类一千个图像以及图像分类的实验结果。

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