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Why is Real-World Visual Object Recognition Hard?

机译:为什么现实世界中的视觉对象识别很难?

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摘要

Progress in understanding the brain mechanisms underlying vision requires the construction of computational models that not only emulate the brain's anatomy and physiology, but ultimately match its performance on visual tasks. In recent years, “natural” images have become popular in the study of vision and have been used to show apparently impressive progress in building such models. Here, we challenge the use of uncontrolled “natural” images in guiding that progress. In particular, we show that a simple V1-like model—a neuroscientist's “null” model, which should perform poorly at real-world visual object recognition tasks—outperforms state-of-the-art object recognition systems (biologically inspired and otherwise) on a standard, ostensibly natural image recognition test. As a counterpoint, we designed a “simpler” recognition test to better span the real-world variation in object pose, position, and scale, and we show that this test correctly exposes the inadequacy of the V1-like model. Taken together, these results demonstrate that tests based on uncontrolled natural images can be seriously misleading, potentially guiding progress in the wrong direction. Instead, we reexamine what it means for images to be natural and argue for a renewed focus on the core problem of object recognition—real-world image variation.
机译:在理解视觉基础的大脑机制方面的进步要求构建计算模型,这些计算模型不仅要模仿大脑的解剖结构和生理学,而且最终要使其在视觉任务上的表现相匹配。近年来,“自然”图像在视觉研究中变得越来越流行,并已被用来显示在构建此类模型方面的令人印象深刻的进步。在这里,我们挑战使用不受控制的“自然”图像来指导这一进展。特别是,我们展示了一个简单的类似于V1的模型(神经科学家的“空”模型,在现实世界中的视觉对象识别任务中应表现不佳)优于最新的对象识别系统(受生物启发或其他方式)进行表面上自然的标准图像识别测试。作为对策,我们设计了一个“更简单”的识别测试,以更好地跨越现实世界中对象姿态,位置和比例的变化,并且我们证明该测试正确地揭示了类似于V1的模型的不足之处。综上所述,这些结果表明,基于不受控制的自然图像进行的测试可能会严重误导人,可能会引导错误方向的进展。取而代之的是,我们重新审视图像自然的含义,并主张重新关注对象识别的核心问题-现实世界中的图像变化。

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