Evaluating keypoint methods for content-based copyright protection of digital images

Larry Huston, R. Sukthankar, Yan Ke
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引用次数: 2

Abstract

This paper evaluates the effectiveness of keypoint methods for content-based protection of digital images. These methods identify a set of "distinctive" regions (termed keypoints) in an image and encode them using descriptors that are robust to expected image transformations. To determine whether particular images were derived from a protected image, the keypoints for both images are generated and their descriptors matched. We describe a comprehensive set of experiments to examine how keypoint methods cope with three real-world challenges: (1) loss of keypoints due to cropping; (2) matching failures caused by approximate nearest-neighbor indexing schemes; (3) degraded descriptors due to significant image distortions. While keypoint methods perform very well in general, this paper identifies cases where the accuracy of such methods degrades.
基于内容的数字图像版权保护关键点方法评价
本文评价了基于内容的数字图像保护关键点方法的有效性。这些方法识别图像中的一组“独特”区域(称为关键点),并使用对预期图像转换具有鲁棒性的描述符对其进行编码。为了确定特定图像是否来自受保护的图像,生成两个图像的关键点并匹配它们的描述符。我们描述了一套全面的实验来研究关键点方法如何应对三个现实世界的挑战:(1)由于裁剪导致关键点丢失;(2)近似最近邻索引方案导致的匹配失败;(3)显著的图像失真导致描述符退化。虽然关键点方法通常执行得很好,但本文确定了这种方法的准确性会降低的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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