CVAIJan 21, 2025

Survey on Hand Gesture Recognition from Visual Input

arXiv:2501.11992v329 citationsh-index: 21IEEE Access
Originality Synthesis-oriented
AI Analysis

It provides a synthesis of current trends and challenges for researchers in human-computer interaction fields such as sign language and VR, but is incremental as a survey.

This survey addresses the lack of comprehensive reviews in hand gesture recognition by examining recent advancements in methods and datasets for visual input, highlighting open challenges like robustness and real-time efficiency.

Hand gesture recognition has become an important research area, driven by the growing demand for human-computer interaction in fields such as sign language recognition, virtual and augmented reality, and robotics. Despite the rapid growth of the field, there are few surveys that comprehensively cover recent research developments, available solutions, and benchmark datasets. This survey addresses this gap by examining the latest advancements in hand gesture and 3D hand pose recognition from various types of camera input data including RGB images, depth images, and videos from monocular or multiview cameras, examining the differing methodological requirements of each approach. Furthermore, an overview of widely used datasets is provided, detailing their main characteristics and application domains. Finally, open challenges such as achieving robust recognition in real-world environments, handling occlusions, ensuring generalization across diverse users, and addressing computational efficiency for real-time applications are highlighted to guide future research directions. By synthesizing the objectives, methodologies, and applications of recent studies, this survey offers valuable insights into current trends, challenges, and opportunities for future research in human hand gesture recognition.

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