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Machine learning model-based two-dimensional matrix computation model for human motion and dance recovery

机译:基于机器学习模型的人类运动和舞蹈恢复的二维矩阵计算模型

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Many regions of human movement capturing are commonly used. Still, it includes a complicated capturing method, and the obtained information contains missing information invariably due to the human's body or clothing structure. Recovery of motion that aims to recover from degraded observation and the underlying complete sequence of motion is still a difficult task, because the nonlinear structure and the filming property is integrated into the movements. Machine learning model based two-dimensional matrix computation (MM-TDMC) approach demonstrates promising performance in short-term motion recovery problems. However, the theoretical guarantee for the recovery of nonlinear movement information lacks in the two-dimensional matrix computation model developed for linear information. To overcome this drawback, this study proposes MM-TDMC for human motion and dance recovery. The advantages of the machine learning-based Two-dimensional matrix computation model for human motion and dance recovery shows extensive experimental results and comparisons with auto-conditioned recurrent neural network, multimodal corpus, low-rank matrix completion, and kinect sensors methods.
机译:通常使用人类运动的许多区域。尽管如此,它包括一个复杂的捕获方法,所获得的信息由于人体的身体或衣服结构而不变地包含缺失的信息。恢复旨在从退化观察和潜在的运动序列恢复的运动仍然是一项艰巨的任务,因为非线性结构和拍摄性能被整合到运动中。基于机器学习模型的二维矩阵计算(MM-TDMC)方法在短期运动恢复问题中展示了有希望的性能。然而,在为线性信息开发的二维矩阵计算模型中缺乏非线性移动信息的恢复的理论保证。为了克服这项缺点,本研究提出了用于人类运动和舞蹈恢复的MM-TDMC。用于人类运动和舞蹈恢复的基于机器学习的二维矩阵计算模型的优点显示了广泛的实验结果和与自动调节的经常性神经网络,多模式语料库,低秩矩阵完成和Kinect传感器方法的比较。

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