1. The Accuracy of the k-Nearest Neighbors and k-Means Algorithms in Gesture Identification.
- Author
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Guzsvinecz, Tibor, Szűcs, Judit, Szucs, Veronika, Demeter, Robert, Katona, Jozsef, and Kovari, Attila
- Subjects
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K-means clustering , *K-nearest neighbor classification , *GESTURE , *DIGITAL technology , *HUMAN-computer interaction , *EUCLIDEAN algorithm , *EUCLIDEAN distance - Abstract
In today's digital era, human-computer interaction interfaces evolve and increase together with the needs of the users. However, the existing technologies have their limitations, which can hinder the efficiency of modern input devices like the Kinect sensor or other similar sensors. In this paper we improved our previous algorithm by extending it with two algorithms that aim to help telerehabilitation for individuals with movement disabilities. These two algorithms are based on the k-Nearest Neighbors, the k-Means algorithms. The algorithms are designed to accommodate the needs of the patients by adapting to their gestures based on their previous three. Using these gestures, the algorithms create multiple gesture acceptance domains around each coordinate of the gesture. Consequently, they decide whether the next user-input gesture can be considered the same movement. The accuracy of these algorithms was evaluated in three acceptance domains by comparing gesture descriptors with either the Euclidean or the Manhattan distance calculation methods. The results show that k-Nearest Neighbors algorithm yields better results in larger acceptance domains, while the k-Means algorithm can provide a better gesture acceptance rate in the smaller ones. The results show that both algorithms can be used in the telerehabilitation process, although the k-Means algorithm is more accurate than the k-Nearest Neighbors algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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