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Learning Representations for Animated Motion Sequence and Implied Motion Recognition

机译:学习表示形式的动画运动序列和隐式运动识别

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The detection and categorization of animate motions is a crucial task underlying social interaction and decision-making. Neural representations of perceived animate objects are built into cortical area STS which is a region of convergent input from intermediate level form and motion representations. Populations of STS cells exist which are selectively responsive to specific action sequences, such as walkers. It is still unclear how and to which extent form and motion information contribute to the generation of such representations and what kind of mechanisms are utilized for the learning processes. The paper develops a cortical model architecture for the unsupervised learning of animated motion sequence representations. We demonstrate how the model automatically selects significant motion patterns as well as meaningful static snapshot categories from continuous video input. Such key poses correspond to articulated postures which are utilized in probing the trained network to impose implied motion perception from static views. We also show how sequence selective representations are learned in STS by fusing snapshot and motion input and how learned feedback connections enable making predictions about future input. Network simulations demonstrate the computational capacity of the proposed model.
机译:动画运动的检测和分类是社会互动和决策基础的关键任务。感知到的有生命物体的神经表示被构建到皮质区域STS中,该区域是来自中间级别形式和运动表示的会聚输入区域。存在对特定动作序列(例如沃克)有选择性响应的STS细胞群体。尚不清楚形式和运动信息如何以及在多大程度上促成这种表示的产生以及用于学习过程的机制的种类。本文开发了一种皮质模型体系结构,用于动画运动序列表示的无监督学习。我们演示了该模型如何从连续视频输入中自动选择重要的运动模式以及有意义的静态快照类别。这样的关键姿势对应于在探测经训练的网络以从静态视图强加暗示的运动感知中使用的关节姿势。我们还将展示如何通过融合快照和运动输入来在STS中学习序列选择表示,以及所学习的反馈连接如何使您能够对未来的输入进行预测。网络仿真证明了所提出模型的计算能力。

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