Condensing image databases when retrieval is based on non-metric distances

D. Jacobs, D. Weinshall, Yoram Gdalyahu
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引用次数: 25

Abstract

One of the key problems in appearance-based vision is understanding how to use a set of labeled images to classify new images. Classification systems that can model human performance, or that use robust image matching methods, often make use of similarity judgments that are non-metric but when the triangle inequality is not obeyed, most existing pattern recognition techniques are not applicable. We note that exemplar-based (or nearest-neighbor) methods can be applied naturally when using a wide class of non-metric similarity functions. The key issue, however, is to find methods for choosing good representatives of a class that accurately characterize it. We note that existing condensing techniques for finding class representatives are ill-suited to deal with non-metric dataspaces. We then focus on developing techniques for solving this problem, emphasizing two points: First, we show that the distance between two images is not a good measure of how well one image can represent another in non-metric spaces. Instead, we use the vector correlation between the distances from each image to other previously seen images. Second, we show that in non-metric spaces, boundary points are less significant for capturing the structure of a class than they are in Euclidean spaces. We suggest that atypical points may be more important in describing classes. We demonstrate the importance of these ideas to learning that generalizes from experience by improving performance using both synthetic and real images.
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当检索基于非度量距离时压缩图像数据库
基于外观的视觉的关键问题之一是理解如何使用一组标记图像对新图像进行分类。可以模拟人类行为的分类系统,或者使用鲁棒图像匹配方法的分类系统,通常使用非度量的相似性判断,但是当不遵守三角不等式时,大多数现有的模式识别技术都不适用。我们注意到,当使用广泛的非度量相似函数时,基于范例(或最近邻)的方法可以自然地应用。然而,关键问题是找到方法来选择一个类的良好代表,以准确地描述它。我们注意到,现有的用于寻找类代表的压缩技术不适合处理非度量数据空间。然后我们专注于开发解决这个问题的技术,强调两点:首先,我们表明两幅图像之间的距离并不是一个很好的衡量一个图像在非度量空间中如何表现另一个图像的标准。相反,我们使用从每个图像到其他先前看到的图像的距离之间的向量相关性。其次,我们证明了在非度量空间中,边界点对于捕获类的结构不像在欧几里德空间中那么重要。我们认为非典型点在描述类时可能更重要。我们通过使用合成图像和真实图像来提高性能,证明了这些思想对从经验中归纳的学习的重要性。
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