A Literature Survey of Human Activity Recognition Using Deep Learning and Nonparametric Model with Some Exchanges in Karl Popper’s Viewpoint and Kuhn’s Paradigm in Philosophy of Science

I. P. Wibawa, M. Kallista, G. R. Phaijoo
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Abstract

Human skeletal detection and human gesture recognition are interesting subjects that have been investigated during the past three decades. Single-RGB, RGB-D camera, and Initial Measurement Unit (IMU) are some of the sensors for recording human motion data. Numerous methods for gesture recognition and classification have been reviewed in this survey. The classification is divided into nonparametric models and deep learning models, which afterwards will be compared in terms of accuracy and running time, respectively. The feature extractions are separated based on features processed from the sensor data, including skeleton-based features, depth image-based features, and hybrid features. A comparison of accuracy values will be offered based on the model and its attributes. In addition, we present an interchange of perspectives on deep learning and nonparametric models based on Karl Popper’s perspective and Kuhn’s paradigm in the study of the philosophy of science. By substituting the falsification principle for induction, Popper attempts to refute the traditional empiricist perspective of the scientific method. From the philosophy of science’s perspective, the study on human action recognition is in the normal science phase according to Kuhn’s paradigm and is corroborated in accordance with Popper’s theory.
基于深度学习和非参数模型的人类活动识别研究综述——兼谈波普尔和库恩的科学哲学范式
人体骨骼检测和人体手势识别是近三十年来研究的有趣课题。单rgb、RGB-D相机和初始测量单元(IMU)是记录人体运动数据的一些传感器。本文综述了手势识别和分类的多种方法。分类分为非参数模型和深度学习模型,随后将分别在准确率和运行时间方面进行比较。基于传感器数据处理的特征进行特征提取,包括基于骨架的特征、基于深度图像的特征和混合特征。将根据模型及其属性提供精度值的比较。此外,我们在科学哲学研究中基于卡尔·波普尔的观点和库恩的范式,对深度学习和非参数模型的观点进行了交换。波普尔以证伪原则代替归纳法,试图反驳传统的科学方法经验主义观点。从科学哲学的角度看,人的行为识别研究按照库恩的范式处于正常的科学阶段,按照波普尔的理论得到确证。
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