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4 months ago

Deep Fisher Discriminant Learning for Mobile Hand Gesture Recognition

Chunyu Xie; Ce Li; Baochang Zhang; Chen Chen; Jungong Han

Deep Fisher Discriminant Learning for Mobile Hand Gesture Recognition

Abstract

Gesture recognition is a challenging problem in the field of biometrics. In this paper, we integrate Fisher criterion into Bidirectional Long-Short Term Memory (BLSTM) network and Bidirectional Gated Recurrent Unit (BGRU),thus leading to two new deep models termed as F-BLSTM and F-BGRU. BothFisher discriminative deep models can effectively classify the gesture based on analyzing the acceleration and angular velocity data of the human gestures. Moreover, we collect a large Mobile Gesture Database (MGD) based on the accelerations and angular velocities containing 5547 sequences of 12 gestures. Extensive experiments are conducted to validate the superior performance of the proposed networks as compared to the state-of-the-art BLSTM and BGRU on MGD database and two benchmark databases (i.e. BUAA mobile gesture and SmartWatch gesture).

Code Repositories

chriswegmann/drone_steering
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
hand-gesture-recognition-on-buaaF-BGRU
Accuracy: 99.25
hand-gesture-recognition-on-mgbF-BLSTM
Accuracy: 98.04
hand-gesture-recognition-on-smartwatchF-BGRU
Accuracy: 97.4

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Deep Fisher Discriminant Learning for Mobile Hand Gesture Recognition | Papers | HyperAI