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Action recognition robust to position changes using skeleton information and SVM

机译:使用骨架信息和SVM进行位置更改的鲁棒动作识别

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Aiming at the problem that the action recognition algorithms based on vision have a high requirement of the background and the human position relative to the sensor, an algorithm which is robust to the position changing of the human is proposed. The Microsoft v2 is used to collect skeleton data and standardize it, then the feature vectors are extracted from the data, at last after the correction of the feature information, the distribution related with the skeleton data is collected and input to the SVM to train. This method can keep stable action recognition when the angle between human torso and Kinect is changed. Experiment result turns out that this position-robust recognition algorithm keeps a recognition accuracy rate above 80%, which is over the state-of-art solutions.
机译:针对基于视觉的动作识别算法对背景和人体相对于传感器的位置要求较高的问题,提出了一种对人体位置变化具有鲁棒性的算法。 Microsoft v2用于收集骨架数据并对其进行标准化,然后从数据中提取特征向量,最后在对特征信息进行校正之后,收集与骨架数据有关的分布并将其输入到SVM进行训练。当人体与Kinect之间的角度发生变化时,该方法可以保持稳定的动作识别。实验结果表明,该位置鲁棒识别算法使识别准确率保持在80%以上,超过了现有的解决方案。

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