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Motion Integration Using Competitive Priors

机译:使用竞争先验进行运动整合

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摘要

Psychophysical experiments show that humans are better at perceiving rotation and expansion than translation [5] [9]. These findings are inconsistent with standard models of motion integration which predict best performance for translation. To explain this discrepancy, our theory formulates motion perception at two levels of inference: we first perform model selection between the competing models (e.g. translation, rotation, and expansion) and then estimate the velocity using the selected model. We define novel prior models for smooth rotation and expansion using techniques similar to those in the slow-and-smooth model [23] (e.g. Green functions of differential operators). The theory gives good agreement with the trends observed in four human experiments.
机译:心理物理实验表明,人类比旋转更能感知旋转和扩展[5] [9]。这些发现与预测整合效果最佳的运动整合标准模型不一致。为了解释这种差异,我们的理论在两个推理级别上阐述了运动感知:我们首先在竞争模型之间进行模型选择(例如平移,旋转和扩展),然后使用选定的模型估算速度。我们使用类似于慢速和平滑模型[23]中的技术(例如,微分算子的Green函数)定义了用于平滑旋转和扩展的新颖先验模型。该理论与四个人体实验中观察到的趋势非常吻合。

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