Hand Gesture Recognition

41 papers with code • 18 benchmarks • 14 datasets

Hand gesture recognition (HGR) is a subarea of Computer Vision where the focus is on classifying a video or image containing a dynamic or static, respectively, hand gesture. In the static case, gestures are also generally called poses. HGR can also be performed with point cloud or joint hand data.

Latest papers with no code

A Deep Learning Sequential Decoder for Transient High-Density Electromyography in Hand Gesture Recognition Using Subject-Embedded Transfer Learning

no code yet • 23 Sep 2023

Hand gesture recognition (HGR) has gained significant attention due to the increasing use of AI-powered human-computer interfaces that can interpret the deep spatiotemporal dynamics of biosignals from the peripheral nervous system, such as surface electromyography (sEMG).

Dynamic Hand Gesture-Featured Human Motor Adaptation in Tool Delivery using Voice Recognition

no code yet • 20 Sep 2023

In response to these challenges, this paper introduces an innovative human-robot collaborative framework that seamlessly integrates hand gesture and dynamic movement recognition, voice recognition, and a switchable control adaptation strategy.

Hand Gesture Recognition with Two Stage Approach Using Transfer Learning and Deep Ensemble Learning

no code yet • 20 Sep 2023

By utilizing these models as base learners and applying the Dirichlet ensemble technique, we achieved an accuracy rate of 98. 88%.

On-device Real-time Custom Hand Gesture Recognition

no code yet • 19 Sep 2023

Our framework provides a pre-trained single-hand embedding model that can be fine-tuned for custom gesture recognition.

From Unimodal to Multimodal: improving sEMG-Based Pattern Recognition via deep generative models

no code yet • 8 Aug 2023

Conclusion: It demonstrates that incorporating virtual IMU signals, generated by deep generative models, can significantly improve the accuracy of sEMG-based HGR.

sEMG-based Hand Gesture Recognition with Deep Learning

no code yet • 19 Jun 2023

Two-posture training proves the best postural training (proving the benefit of training on more than one posture) and yields 81. 2% inter-posture test accuracy.

CaptAinGlove: Capacitive and Inertial Fusion-Based Glove for Real-Time on Edge Hand Gesture Recognition for Drone Control

no code yet • 7 Jun 2023

We present CaptAinGlove, a textile-based, low-power (1. 15Watts), privacy-conscious, real-time on-the-edge (RTE) glove-based solution with a tiny memory footprint (2MB), designed to recognize hand gestures used for drone control.

Agile gesture recognition for capacitive sensing devices: adapting on-the-job

no code yet • 12 May 2023

However, there is growing demand for gesture recognition technology that can be implemented on low-power devices using limited sensor data instead of high-dimensional inputs like hand images.

SimplyMime: A Control at Our Fingertips

no code yet • 22 Apr 2023

This paper presents a novel system, named SimplyMime, which aims to eliminate the need for multiple remote controls for consumer electronics and provide the user with intuitive control without the need for additional devices.

Deep Attention Network for Enhanced Hand Gesture Recognition System

no code yet • journal 2023

Available datasets were collected to train the deep neural network architecture to create a gesture recognition system.