比较不变目标识别任务中最先进的视觉特征

Nicolas Pinto, Youssef Barhomi, David D. Cox, J. DiCarlo
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引用次数: 72

摘要

对保持身份的图像变化的容忍度(“不变性”)(例如位置、比例、姿势、照明的变化)是任何视觉对象识别系统(生物或工程)必须解决的基本问题。虽然标准的自然图像数据库基准对于指导计算机视觉的进展是有用的,但它们可能无法探测识别系统解决不变性问题的能力[23,24,25]。因此,为了了解哪些计算方法在解决不变性问题方面取得了进展,我们使用旨在系统地探测不变性的综合识别任务,对各种最先进的视觉表示进行了比较和对比。我们成功地重新实现了各种最先进的视觉表现,并在自然图像基准上确认了它们的发布性能。我们在这里报告说,大多数这些表示在不变识别上表现不佳,但是一个表示[21]在两个基线表示上显示出显著的性能提升。我们还展示了这种方法如何更深入地阐明不同视觉表示的优缺点,从而指导不变对象识别的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing state-of-the-art visual features on invariant object recognition tasks
Tolerance (“invariance”) to identity-preserving image variation (e.g. variation in position, scale, pose, illumination) is a fundamental problem that any visual object recognition system, biological or engineered, must solve. While standard natural image database benchmarks are useful for guiding progress in computer vision, they can fail to probe the ability of a recognition system to solve the invariance problem [23, 24, 25]. Thus, to understand which computational approaches are making progress on solving the invariance problem, we compared and contrasted a variety of state-of-the-art visual representations using synthetic recognition tasks designed to systematically probe invari-ance. We successfully re-implemented a variety of state-of-the-art visual representations and confirmed their published performance on a natural image benchmark. We here report that most of these representations perform poorly on invariant recognition, but that one representation [21] shows significant performance gains over two baseline representations. We also show how this approach can more deeply illuminate the strengths and weaknesses of different visual representations and thus guide progress on invariant object recognition.
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