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首页> 外文期刊>Frontiers in Computational Neuroscience >Complex cells decrease errors for the Müller-Lyer illusion in a model of the visual ventral stream
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Complex cells decrease errors for the Müller-Lyer illusion in a model of the visual ventral stream

机译:复杂细胞减少了视觉腹侧流模型中Müller-Lyer幻觉的误差

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To improve robustness in object recognition, many artificial visual systems imitate the way in which the human visual cortex encodes object information as a hierarchical set of features. These systems are usually evaluated in terms of their ability to accurately categorize well-defined, unambiguous objects and scenes. In the real world, however, not all objects and scenes are presented clearly, with well-defined labels and interpretations. Visual illusions demonstrate a disparity between perception and objective reality, allowing psychophysicists to methodically manipulate stimuli and study our interpretation of the environment. One prominent effect, the Müller-Lyer illusion, is demonstrated when the perceived length of a line is contracted (or expanded) by the addition of arrowheads (or arrow-tails) to its ends. HMAX, a benchmark object recognition system, consistently produces a bias when classifying Müller-Lyer images. HMAX is a hierarchical, artificial neural network that imitates the “simple” and “complex” cell layers found in the visual ventral stream. In this study, we perform two experiments to explore the Müller-Lyer illusion in HMAX, asking: (1) How do simple vs. complex cell operations within HMAX affect illusory bias and precision? (2) How does varying the position of the figures in the input image affect classification using HMAX? In our first experiment, we assessed classification after traversing each layer of HMAX and found that in general, kernel operations performed by simple cells increase bias and uncertainty while max-pooling operations executed by complex cells decrease bias and uncertainty. In our second experiment, we increased variation in the positions of figures in the input images that reduced bias and uncertainty in HMAX. Our findings suggest that the Müller-Lyer illusion is exacerbated by the vulnerability of simple cell operations to positional fluctuations, but ameliorated by the robustness of complex cell responses to such variance.
机译:为了提高对象识别的鲁棒性,许多人工视觉系统都模仿了人类视觉皮层将对象信息编码为一组层次特征的方式。这些系统通常根据其对明确定义的,明确的对象和场景进行准确分类的能力进行评估。但是,在现实世界中,并非所有对象和场景都具有清晰定义的标签和解释,因此无法清晰呈现。视觉错觉表明感知和客观现实之间存在差异,从而允许心理物理学家有条不紊地操纵刺激并研究我们对环境的解释。当线的感知长度通过在其末端增加箭头(或箭头尾部)而收缩(或扩展)时,便表现出一种显着的效果,即缪勒-里尔幻觉。基准对象识别系统HMAX在对Müller-Lyer图像进行分类时始终会产生偏差。 HMAX是一种分层的人工神经网络,它模仿了视觉腹侧流中发现的“简单”和“复杂”细胞层。在这项研究中,我们进行了两个实验来探索HMAX中的Müller-Lyer幻觉,并提出以下问题:(1)HMAX中简单或复杂的细胞操作如何影响幻觉偏差和精确度? (2)改变输入图像中图形的位置如何影响使用HMAX进行分类?在我们的第一个实验中,我们遍历了HMAX的每一层后评估了分类,发现通常,由简单单元执行的内核操作会增加偏差和不确定性,而由复杂单元执行的最大池操作会减少偏差和不确定性。在第二个实验中,我们增加了输入图像中图形位置的变化,从而减少了HMAX中的偏差和不确定性。我们的研究结果表明,简单细胞操作对位置波动的脆弱性加剧了Müller-Lyer错觉,但复杂细胞对这种变化的反应的鲁棒性却改善了这一现象。

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