Binding Dancers Into Attractors

Franziska Kaltenberger, S. Otte, Martin Volker Butz
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引用次数: 1

Abstract

To effectively perceive and process observations in our environment, feature binding and perspective taking are crucial cognitive abilities. Feature binding combines observed features into one entity, called a Gestalt. Perspective taking transfers the percept into a canonical, observer-centered frame of reference. Here we propose a recurrent neural network model that solves both challenges. We first train an LSTM to predict 3D motion dynamics from a canonical perspective. We then present similar motion dynamics with novel viewpoints and feature arrangements. Retrospective inference enables the deduction of the canonical perspective. Combined with a robust mutual-exclusive softmax selection scheme, random feature arrangements are reordered and precisely bound into known Gestalt percepts. To corroborate evidence for the architecture’s cognitive validity, we examine its behavior on the silhouette illusion, which elicits two competitive Gestalt interpretations of a rotating dancer. Our system flexibly binds the information of the rotating Figure into the alternative attractors resolving the illusion’s ambiguity and imagining the respective depth interpretation and the corresponding direction of rotation. We finally discuss the potential universality of the proposed mechanisms.
把舞者变成吸引者
为了有效地感知和处理环境中的观察,特征绑定和视角获取是至关重要的认知能力。特征绑定将观察到的特征合并成一个实体,称为格式塔。透视法将感知转换为一个规范的、以观察者为中心的参考框架。在这里,我们提出了一个递归神经网络模型来解决这两个挑战。我们首先训练LSTM来从规范的角度预测3D运动动力学。然后,我们提出了类似的运动动力学与新的视点和特征安排。追溯推理使经典视角的演绎成为可能。结合一个强大的互斥softmax选择方案,随机特征安排被重新排序,并精确地绑定到已知的格式塔感知。为了证实建筑的认知有效性,我们研究了它在轮廓错觉上的行为,这引出了旋转舞者的两种竞争性格式塔解释。我们的系统灵活地将旋转图形的信息绑定到替代吸引子中,解决了错觉的模糊性,并想象了各自的深度解释和相应的旋转方向。我们最后讨论了拟议机制的潜在普遍性。
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