Publication | Closed Access
Tiny hand gesture recognition without localization via a deep convolutional network
114
Citations
28
References
2017
Year
Deep Convolutional NetworkHuman BodyConvolutional Neural NetworkImage AnalysisMachine LearningMachine VisionEngineeringGesture RecognitionPattern RecognitionObject DetectionBiometricsHuman Pose EstimationHuman FaceDeep LearningVisual Hand-gesture RecognitionComputer Vision
Visual hand-gesture recognition is being increasingly desired for human-computer interaction interfaces. In many applications, hands only occupy about 10% of the image, whereas the most of it contains background, human face, and human body. Spatial localization of the hands in such scenarios could be a challenging task and ground truth bounding boxes need to be provided for training, which is usually not accessible. However, the location of the hand is not a requirement when the criteria is just the recognition of a gesture to command a consumer electronics device, such as mobiles phones and TVs. In this paper, a deep convolutional neural network is proposed to directly classify hand gestures in images without any segmentation or detection stage that could discard the irrelevant not-hand areas. The designed hand-gesture recognition network can classify seven sorts of hand gestures in a user-independent manner and on real time, achieving an accuracy of 97.1% in the dataset with simple backgrounds and 85.3% in the dataset with complex backgrounds.
| Year | Citations | |
|---|---|---|
Page 1
Page 1