图像组的尺度不变共分割。

Lopamudra Mukherjee, Vikas Singh, Jiming Peng
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引用次数: 132

摘要

我们的主要兴趣是将共分割问题推广到一大组图像,即从多个图像中并发分割共同前景区域。我们进一步希望我们的算法提供尺度不变性(前景在不同的图像中可能具有任意大小),并且运行时间在集合中的图像数量上近似线性地增加(不超过)。使这种设置特别具有挑战性的是,即使我们忽略了所需的尺度不变性,在许多最近的论文中(除了[1])形式化的共分割问题,在两幅图像的情况下已经很难得到最佳解决。将这种模型直接扩展到多个图像会导致松散松弛;除非我们对外观模型施加一个分布假设,否则现有的图像对前景外观变化测量机制会导致非常大的问题规模(即使对于中等数量的图像)。本文提出了一种令人惊讶的易于实现的算法,该算法性能良好,并且满足上述所有要求(比例不变性,低计算需求和多图像设置的可行性)。我们对该框架的特性进行了定性和技术分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scale Invariant cosegmentation for image groups.

Our primary interest is in generalizing the problem of Cosegmentation to a large group of images, that is, concurrent segmentation of common foreground region(s) from multiple images. We further wish for our algorithm to offer scale invariance (foregrounds may have arbitrary sizes in different images) and the running time to increase (no more than) near linearly in the number of images in the set. What makes this setting particularly challenging is that even if we ignore the scale invariance desiderata, the Cosegmentation problem, as formalized in many recent papers (except [1]), is already hard to solve optimally in the two image case. A straightforward extension of such models to multiple images leads to loose relaxations; and unless we impose a distributional assumption on the appearance model, existing mechanisms for image-pair-wise measurement of foreground appearance variations lead to significantly large problem sizes (even for moderate number of images). This paper presents a surprisingly easy to implement algorithm which performs well, and satisfies all requirements listed above (scale invariance, low computational requirements, and viability for the multiple image setting). We present qualitative and technical analysis of the properties of this framework.

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CiteScore
43.50
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