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Human action recognition using hierarchic body related occupancy maps

机译:使用阶级身体相关占用地图的人类行动识别

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摘要

This paper introduces a novel spatial method for human action recognition that is discriminative without needing temporal information or action key poses. First, skeletal data is acquired with the Microsoft Kinect v2 sensor and undergoes a Pose Invariant Normalization (PIN) process. The PIN process translates, rotates and scales the various observed poses to eliminate body differences and positional differences between subjects. Second, the method uses a Body Related Occupancy Map (BROM), that describes in a 3D grid how the area around specific body parts is used, as a strong indicator of the particular action that is being performed. The BROM and its 2D projections are used as feature inputs for Random Forest classifiers. These classifiers are then combined in a hierarchic structure to boost the classification performance. The approach is tested on a self-captured database of 23 human actions for game-play. On this database a classification with an accuracy score of 91% is achieved for the hierarchic BROM (HiBROM) classification. On the public CAD60 dataset, the HiBROM classifier attains 87.2% accuracy which is comparable to other state-of-the-art methods.
机译:本文介绍了一种用于人类行动识别的新型空间方法,这是歧视而不需要时间信息或动作关键姿势。首先,使用Microsoft Kinect V2传感器获取骨架数据,并经过姿势不变标准化(PIN)过程。引脚过程转换,旋转和缩放各种观察到的姿势,以消除受试者之间的身体差异和位置差异。其次,该方法使用身体相关的占用图(BROM),所述占用图(BROM)描述在3D网格中,如何使用特定身体部位周围的区域,作为正在执行的特定动作的强指示器。 BROM及其2D投影用作随机林分类器的特征输入。然后将这些分类器组合在层次结构中以提高分类性能。该方法是在一个用于游戏游戏的23个人类行动的自捕获数据库上进行测试。在该数据库上,为分级溴(Hibrom)分类实现了精度得分为91%的分类。在公共CAD60数据集上,Hibrom Classifier获得了87.2%的精度,可与其他最先进的方法相当。

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