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SYSTEMS AND METHOD FOR ACTION RECOGNITION USING MICRO-DOPPLER SIGNATURES AND RECURRENT NEURAL NETWORKS

机译:使用微多普勒签名和递归神经网络进行动作识别的系统和方法

摘要

The present disclosure may be embodied as systems and methods for action recognition developed using a multimodal dataset that incorporates both visual data, which facilitates the accurate tracking of movement, and active acoustic data, which captures the micro- Doppler modulations induced by the motion. The dataset includes twenty-one actions and focuses on examples of orientational symmetry that a single active ultrasound sensor should have the most difficulty discriminating. The combined results from three independent ultrasound sensors are encouraging, and provide a foundation to explore the use of data from multiple viewpoints to resolve the orientational ambiguity in action recognition. In various embodiments, recurrent neural networks using long short-term memory (LSTM) or hidden Markov models (HMMs) are disclosed for use in action recognition, for example, human action recognition, from micro-Doppler signatures.
机译:本公开可以体现为使用多模态数据集开发的用于动作识别的系统和方法,该多模态数据集既包括视觉数据(其有助于运动的精确跟踪),又包括有源声学数据,其捕获由运动引起的微多普勒调制。该数据集包括21个动作,并着重于单个有源超声传感器最难区分的定向对称性示例。来自三个独立超声传感器的组合结果令人鼓舞,并为探索从多个角度使用数据以解决动作识别中的方向歧义提供了基础。在各种实施例中,公开了使用长短期记忆(LSTM)或隐马尔可夫模型(HMM)的递归神经网络,用于从微多普勒签名中进行动作识别,例如人类动作识别。

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