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Attacking image classification based on bag-of-visual-words

机译:基于袋禁止词语攻击图像分类

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摘要

Nowadays, with the widespread diffusion of online image databases, the possibility of easily searching, browsing and filtering image content is more than an urge. Typically, this operation is made possible thanks to the use of tags, i.e., textual representations of semantic concepts associated to the images. The tagging process is either performed by users, who manually label the images, or by automatic image classifiers, so as to reach a broader coverage. Typically, these methods rely on the extraction of local descriptors (e.g., SIFT, SURF, HOG, etc.), the construction of a suitable feature-based representation (e.g., bag-of-visual words), and the use of supervised classifiers (e.g., SVM). In this paper, we show that such a classification procedure can be attacked by a malicious user, who might be interested in altering the tags automatically suggested by the classifier. This might be used, for example, by an attacker who is willing to avoid the automatic detection of improper material in a parental control system. More specifically, we show that it is possible to modify an image in order to have it associated to the wrong class, without perceptually affecting the image visual quality. The proposed method is validated against a well known image dataset, and results prove to be promising, highlighting the need to jointly study the problem from the standpoint of both the analyst and the attacker.
机译:如今,随着在线图像数据库的广泛扩散,易于搜索,浏览和过滤图像内容的可能性超过了一个冲动。通常情况下,这种操作成为可能由于使用的标签,即相关的图像语义概念的文本表示。标记过程由手动标记图像的用户或通过自动图像分类器执行,以便到达更广泛的覆盖范围。通常,这些方法依赖于局部描述符的提取(例如,筛选,冲浪,猪等),构建合适的基于特征的表示(例如,视觉上的单词),以及使用监督分类器的使用(例如,SVM)。在本文中,我们显示这种分类过程可以由恶意用户攻击,该恶意用户可能有兴趣改变分类器自动建议的标签。例如,这可能是由愿意避免在亲本控制系统中自动检测不正确的材料的攻击者使用。更具体地说,我们表明它是可以修改的图像,以便有它关联到错误的类,没有感知影响图像的视觉质量。该方法针对众所周知的图像数据集验证,并且结果证明是有希望的,突出了从分析师和攻击者的角度联合研究问题的需要。

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