1. An Efficient and Fast Model Reduced Kernel KNN for Human Activity Recognition
- Author
-
Liu, Zongying, Li, Shaoxi, Hao, Jiangling, Hu, Jingfeng, and Pan, Mingyang
- Subjects
Data warehousing/data mining ,Algorithm ,Artificial intelligence ,Artificial intelligence -- Analysis -- Research ,Machine learning -- Analysis -- Research ,Data mining -- Research -- Analysis ,Algorithms -- Analysis -- Research - Abstract
With accumulation of data and development of artificial intelligence, human activity recognition attracts lots of attention from researchers. Many classic machine learning algorithms, such as artificial neural network, feed forward neural network, K-nearest neighbors, and support vector machine, achieve good performance for detecting human activity. However, these algorithms have their own limitations and their prediction accuracy still has space to improve. In this study, we focus on K-nearest neighbors (KNN) and solve its limitations. Firstly, kernel method is employed in model KNN, which transforms the input features to be the high-dimensional features. The proposed model KNN with kernel (K-KNN) improves the accuracy of classification. Secondly, a novel reduced kernel method is proposed and used in model K-KNN, which is named as Reduced Kernel KNN (RK-KNN). It reduces the processing time and enhances the classification performance. Moreover, this study proposes an approach of defining number of K neighbors, which reduces the parameter dependency problem. Based on the experimental works, the proposed RK-KNN obtains the best performance in benchmarks and human activity datasets compared with other models. It has super classification ability in human activity recognition. The accuracy of human activity data is 91.60% for HAPT and 92.67% for Smartphone, respectively. Averagely, compared with the conventional KNN, the proposed model RK-KNN increases the accuracy by 1.82% and decreases standard deviation by 0.27. The small gap of processing time between KNN and RK-KNN in all datasets is only 1.26 seconds., Author(s): Zongying Liu [1]; Shaoxi Li (corresponding author) [1]; Jiangling Hao [1]; Jingfeng Hu [1]; Mingyang Pan [1] 1. Introduction Since the 21st century, the development of Internet and the [...]
- Published
- 2021
- Full Text
- View/download PDF