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Sign Language Recognition using Hybrid Neural Networks

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Figure

Fig. 1. Steps for Proposed Sign Language Recognition Model
Table- I: Summary of Various Edge based Segmentation Techniques for Hand Gesture
Fig. 4. ANN Architecture
Table III: Various Shape Based Features for Hand Gesture Recognition  Extracted Shape Features for different Gestures
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