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Learning visual biases from human imagination

机译:从人类想象中学习视觉偏见

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Although the human visual system can recognize many concepts under challenging conditions, it still has some biases. In this paper, we investigate whether we can extract these biases and transfer them into a machine recognition system. We introduce a novel method that, inspired by well-known tools in human psychophysics, estimates the biases that the human visual system might use for recognition, but in computer vision feature spaces. Our experiments are surprising, and suggest that classifiers from the human visual system can be transferred into a machine with some success. Since these classifiers seem to capture favorable biases in the human visual system, we further present an SVM formulation that constrains the orientation of the SVM hyperplane to agree with the bias from human visual system. Our results suggest that transferring this human bias into machines may help object recognition systems generalize across datasets and perform better when very little training data is available.
机译:尽管人类视觉系统可以在挑战性条件下识别许多概念,但仍然存在一些偏差。在本文中,我们研究了是否可以提取这些偏差并将其转移到机器识别系统中。我们引入一种新颖的方法,该方法受人类心理物理学中知名工具的启发,估计了人类视觉系统可能用于识别的偏见,但这种偏见却存在于计算机视觉特征空间中。我们的实验是令人惊讶的,并且表明来自人类视觉系统的分类器可以成功地转移到机器中。由于这些分类器似乎捕获了人类视觉系统中的有利偏差,因此我们进一步提出了一种SVM公式,该公式将SVM超平面的方向约束为与人类视觉系统中的偏差一致。我们的结果表明,将这种人为的偏见转移到机器中可能有助于对象识别系统在数据集中进行泛化,并且在很少的训练数据可用时性能会更好。

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