A Comparison of Deep Learning Models for the Prediction of Hand Hygiene
Videos
- URL: http://arxiv.org/abs/2111.02322v1
- Date: Wed, 3 Nov 2021 16:15:55 GMT
- Title: A Comparison of Deep Learning Models for the Prediction of Hand Hygiene
Videos
- Authors: Rashmi Bakshi
- Abstract summary: This paper presents a comparison of various deep learning models such as Exception, Resnet-50, and Inception V3 for the classification and prediction of hand hygiene gestures.
The dataset consists of six hand hygiene movements in a video format, gathered for 30 participants.
An accuracy of 37% (Xception model), 33% (Inception V3), and 72% (ResNet-50) is achieved in the classification report after the training of the models for 25 epochs.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents a comparison of various deep learning models such as
Exception, Resnet-50, and Inception V3 for the classification and prediction of
hand hygiene gestures, which were recorded in accordance with the World Health
Organization (WHO) guidelines. The dataset consists of six hand hygiene
movements in a video format, gathered for 30 participants. The network consists
of pre-trained models with image net weights and a modified head of the model.
An accuracy of 37% (Xception model), 33% (Inception V3), and 72% (ResNet-50) is
achieved in the classification report after the training of the models for 25
epochs. ResNet-50 model clearly outperforms with correct class predictions. The
major speed limitation can be overcome with the use of fast processing GPU for
future work. A complete hand hygiene dataset along with other generic gestures
such as one-hand movements (linear hand motion; circular hand rotation) will be
tested with ResNet-50 architecture and the variants for health care workers.
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