Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets

Classification algorithms require training data initially labelled by classes to build a model and then to be able to classify the new data. The amount and diversity of training data affect the classification quality and usually the larger the training set, the better the accuracy of classification....

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Main Author: Krzysztof Rzecki
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/24/7279
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spelling doaj-34cd4347546d4545835426cda11664762020-12-19T00:03:31ZengMDPI AGSensors1424-82202020-12-01207279727910.3390/s20247279Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training SetsKrzysztof Rzecki0AGH University of Science and Technology, 30 Mickiewicz Ave., 30-059 Kraków, PolandClassification algorithms require training data initially labelled by classes to build a model and then to be able to classify the new data. The amount and diversity of training data affect the classification quality and usually the larger the training set, the better the accuracy of classification. In many applications only small amounts of training data are available. This article presents a new time series classification algorithm for problems with small training sets. The algorithm was tested on hand gesture recordings in tasks of person identification and gesture recognition. The algorithm provides significantly better classification accuracy than other machine learning algorithms. For 22 different hand gestures performed by 10 people and the training set size equal to 5 gesture execution records per class, the error rate for the newly proposed algorithm is from 37% to 75% lower than for the other compared algorithms. When the training set consists of only one sample per class the new algorithm reaches from 45% to 95% lower error rate. Conducted experiments indicate that the algorithm outperforms state-of-the-art methods in terms of classification accuracy in the problem of person identification and gesture recognition.https://www.mdpi.com/1424-8220/20/24/7279biometricsclassificationgesture recognitionone-shot learningperson identificationsmall training sets
collection DOAJ
language English
format Article
sources DOAJ
author Krzysztof Rzecki
spellingShingle Krzysztof Rzecki
Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets
Sensors
biometrics
classification
gesture recognition
one-shot learning
person identification
small training sets
author_facet Krzysztof Rzecki
author_sort Krzysztof Rzecki
title Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets
title_short Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets
title_full Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets
title_fullStr Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets
title_full_unstemmed Classification Algorithm for Person Identification and Gesture Recognition Based on Hand Gestures with Small Training Sets
title_sort classification algorithm for person identification and gesture recognition based on hand gestures with small training sets
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-12-01
description Classification algorithms require training data initially labelled by classes to build a model and then to be able to classify the new data. The amount and diversity of training data affect the classification quality and usually the larger the training set, the better the accuracy of classification. In many applications only small amounts of training data are available. This article presents a new time series classification algorithm for problems with small training sets. The algorithm was tested on hand gesture recordings in tasks of person identification and gesture recognition. The algorithm provides significantly better classification accuracy than other machine learning algorithms. For 22 different hand gestures performed by 10 people and the training set size equal to 5 gesture execution records per class, the error rate for the newly proposed algorithm is from 37% to 75% lower than for the other compared algorithms. When the training set consists of only one sample per class the new algorithm reaches from 45% to 95% lower error rate. Conducted experiments indicate that the algorithm outperforms state-of-the-art methods in terms of classification accuracy in the problem of person identification and gesture recognition.
topic biometrics
classification
gesture recognition
one-shot learning
person identification
small training sets
url https://www.mdpi.com/1424-8220/20/24/7279
work_keys_str_mv AT krzysztofrzecki classificationalgorithmforpersonidentificationandgesturerecognitionbasedonhandgestureswithsmalltrainingsets
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