CVHCLGMLMar 4, 2020

FineHand: Learning Hand Shapes for American Sign Language Recognition

arXiv:2003.08753v113 citations
AI Analysis

This work addresses gesture recognition for ASL users, but it is incremental as it builds on existing methods with a focus on hand shapes.

The paper tackled the problem of American Sign Language recognition by focusing on learning discriminative hand shape embeddings, which improved video gesture classification accuracy on the GMU-ASL51 benchmark dataset.

American Sign Language recognition is a difficult gesture recognition problem, characterized by fast, highly articulate gestures. These are comprised of arm movements with different hand shapes, facial expression and head movements. Among these components, hand shape is the vital, often the most discriminative part of a gesture. In this work, we present an approach for effective learning of hand shape embeddings, which are discriminative for ASL gestures. For hand shape recognition our method uses a mix of manually labelled hand shapes and high confidence predictions to train deep convolutional neural network (CNN). The sequential gesture component is captured by recursive neural network (RNN) trained on the embeddings learned in the first stage. We will demonstrate that higher quality hand shape models can significantly improve the accuracy of final video gesture classification in challenging conditions with variety of speakers, different illumination and significant motion blurr. We compare our model to alternative approaches exploiting different modalities and representations of the data and show improved video gesture recognition accuracy on GMU-ASL51 benchmark dataset

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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