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Self-Organization of Spatio-Temporal Hierarchy via Learning of Dynamic Visual Image Patterns on Action Sequences

机译:通过学习动作序列上的动态视觉图像模式实现时空层次的自组织

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摘要

It is well known that the visual cortex efficiently processes high-dimensional spatial information by using a hierarchical structure. Recently, computational models that were inspired by the spatial hierarchy of the visual cortex have shown remarkable performance in image recognition. Up to now, however, most biological and computational modeling studies have mainly focused on the spatial domain and do not discuss temporal domain processing of the visual cortex. Several studies on the visual cortex and other brain areas associated with motor control support that the brain also uses its hierarchical structure as a processing mechanism for temporal information. Based on the success of previous computational models using spatial hierarchy and temporal hierarchy observed in the brain, the current report introduces a novel neural network model for the recognition of dynamic visual image patterns based solely on the learning of exemplars. This model is characterized by the application of both spatial and temporal constraints on local neural activities, resulting in the self-organization of a spatio-temporal hierarchy necessary for the recognition of complex dynamic visual image patterns. The evaluation with the Weizmann dataset in recognition of a set of prototypical human movement patterns showed that the proposed model is significantly robust in recognizing dynamically occluded visual patterns compared to other baseline models. Furthermore, an evaluation test for the recognition of concatenated sequences of those prototypical movement patterns indicated that the model is endowed with a remarkable capability for the contextual recognition of long-range dynamic visual image patterns.
机译:众所周知,视觉皮层通过使用分层结构来有效地处理高维空间信息。最近,受视觉皮质空间层次结构启发的计算模型在图像识别中表现出了卓越的性能。然而,到目前为止,大多数生物学和计算模型研究主要集中在空间域上,并且没有讨论视觉皮层的时域处理。关于视觉皮层和其他与运动控制相关的大脑区域的研究表明,大脑也将其分层结构用作时间信息的处理机制。基于先前使用大脑中观察到的空间层次和时间层次的计算模型的成功经验,本报告介绍了一种新颖的神经网络模型,用于仅基于样本的学习来识别动态视觉图像模式。该模型的特征是在局部神经活动上同时应用了空间和时间约束,从而导致了识别复杂动态视觉图像模式所必需的时空层次的自组织。使用Weizmann数据集对一组原型人类运动模式进行识别的评估表明,与其他基线模型相比,该模型在识别动态遮挡的视觉模式方面具有显着的鲁棒性。此外,对那些原型运动模式的串联序列的识别的评估测试表明,该模型具有对远距离动态视觉图像模式进行上下文识别的显着能力。

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  • 年(卷),期 -1(10),7
  • 年度 -1
  • 页码 e0131214
  • 总页数 16
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