A comparison between heuristic and machine learning techniques in fall detection using Kinect v2

Amin Amini, K. Banitsas, J. Cosmas
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引用次数: 16

Abstract

In this paper, two algorithms were tested on 11 healthy adults: one based on heuristic and another one on video tagging machine learning methods for automatic fall detection; both utilizing Microsoft Kinect v2. For our heuristic approach, we used skeletal data to detect falls based on a set of instructions and signal filtering methods. For the machine learning approach, we implemented a dataset utilizing the Adaptive Boosting Trigger (AdaBoostTrigger) algorithm via video tagging to enable fall detection. For each approach, each subject on average has performed six true positive and six false positive fall incidents in two different conditions: one with objects partially blocking the sensor's view and one with partial obstructed field of view. The accuracy of each approach has been compared against one another in different conditions. The result showed an average of 95.42 % accuracy in the heuristic approach and 88.33 % in machine learning technique. We conclude that heuristic approach performs more accurately for fall detection when there is a limited number of training dataset available. Nevertheless, as the gesture detection's complexity increases, the need for a machine learning technique is inevitable.
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基于Kinect v2的启发式和机器学习技术在跌倒检测中的比较
本文在11名健康成人身上测试了两种算法:一种基于启发式算法,另一种基于视频标记机器学习方法的自动跌倒检测;都使用微软Kinect v2。对于我们的启发式方法,我们使用基于一组指令和信号滤波方法的骨骼数据来检测跌倒。对于机器学习方法,我们通过视频标记实现了一个使用自适应增强触发器(AdaBoostTrigger)算法的数据集,以实现跌倒检测。对于每种方法,每个受试者在两种不同的条件下平均发生了6次真阳性和6次假阳性的跌倒事件:一种是物体部分阻挡传感器的视野,另一种是部分阻挡视野。在不同的条件下,对每种方法的准确性进行了比较。结果表明,启发式方法的平均准确率为95.42%,机器学习技术的平均准确率为88.33%。我们得出结论,当可用的训练数据集数量有限时,启发式方法在跌倒检测方面表现得更准确。然而,随着手势检测复杂性的增加,对机器学习技术的需求是不可避免的。
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