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A rotational motion perception neural network based on asymmetric spatiotemporal visual information processing

机译:基于非对称时空视觉信息处理的旋转运动感知神经网络

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摘要

All complex motion patterns can be decomposed into several elements, including translation, expansion/contraction, and rotational motion. In biological vision systems, scientists have found that specific types of visual neurons have specific preferences to each of the three motion elements. There are computational models on translation and expansion/contraction perceptions; however, little has been done in the past to create computational models for rotational motion perception. To fill this gap, we proposed a neural network that utilizes a specific spatiotemporal arrangement of asymmetric lateral inhibited direction selective neural networks (DSNNs) for rotational motion perception. The proposed neural network consists of two parts-presynaptic and postsynaptic parts. In the presynaptic part, there are a number of lateral inhibited DSNNs to extract directional visual cues. In the postsynaptic part, similar to the arrangement of the directional columns in the cerebral cortex, these direction selective neurons are arranged in a cyclic order to perceive rotational motion cues. In the postsynaptic network, the delayed excitation from each direction selective neuron is multiplied by the gathered excitation from this neuron and its unilateral counterparts depending on which rotation, clockwise (cw) or counter-cw (ccw), to perceive. Systematic experiments under various conditions and settings have been carried out and validated the robustness and reliability of the proposed neural network in detecting cw or ccw rotational motion. This research is a critical step further toward dynamic visual information processing.
机译:所有复杂的运动模式都可以分解为几个元素,包括平移,扩展/收缩和旋转运动。在生物视觉系统中,科学家发现特定类型的视觉神经元对这三个运动元素都有特定的偏好。有关于翻译和扩展/收缩感知的计算模型。然而,过去很少做过为旋转运动感知创建计算模型的工作。为了填补这一空白,我们提出了一种神经网络,该神经网络利用非对称侧向抑制方向选择性神经网络(DSNN)的特定时空排列来进行旋转运动感知。拟议的神经网络由突触前和突触后两部分组成。在突触前部分,有许多侧向抑制的DSNN提取方向性视觉提示。在突触后部分,类似于大脑皮质中方向性列的排列,这些方向选择性神经元以循环顺序排列,以感知旋转运动提示。在突触后网络中,来自每个方向选择性神经元的延迟激励乘以来自该神经元及其单侧对应神经元的聚集激励,具体取决于要感知的旋转方向(顺时针(cw)或逆向cw(ccw))。已经进行了在各种条件和设置下的系统实验,并验证了所提出的神经网络在检测cw或ccw旋转运动中的鲁棒性和可靠性。这项研究是朝着动态视觉信息处理迈出的关键一步。

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