Attention-based hand semantic segmentation and gesture recognition using deep networks

EVOLVING SYSTEMS(2024)

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摘要
The ability to discern the shape of hands can be a vital issue in improving the performance of hand gesture recognition for human-computer interaction. Segmentation itself is a very challenging problem having various constraints like illumination variations, complex background etc. The objective of the paper is to incorporate the perception of semantic segmentation into a classification problem and make use of the deep neural models to achieve improved results for both static and dynamic gestures. This paper utilizes the UNet architecture with attention-module to obtain the semantically segmented masks of the input images, which are then fed to a classifier for recognition. The concept of attention-mechanism adds to the improvement of segmentation accuracy. In this work, for static gestures, the top classifier layer of the VGG16 model is replaced with a classifier designed specifically for classifying the gestures at hand. For dynamic gestures, 3D-CNN (C3D) architecture is used as a classifier that can capture spatial as well as temporal information of a gesture video. The data augmentation process is used in preprocessing to generate a sufficient number of training images for the aforementioned CNN-based models. Significant and improved recognition has been achieved for both static and dynamic hand gesture databases through the inherent feature learning capability of CNN and refined segmentation.
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关键词
Semantic segmentation,UNet,CBAM,VGG16,C3D,Static and dynamic hand gestures,Human-computer interaction
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