Sign Language Gesture Recognition Using Doppler Radar and Deep Learning

Title

Sign Language Gesture Recognition Using Doppler Radar and Deep Learning

Description

In this paper, we study American sign language (ASL) hand gesture recognition using Doppler radar. A set of ASL hand gesture motions are captured as micro- Doppler signals using a microwave X-band Doppler radar transceiver. We apply joint time-frequency analysis and observe the presence of the micro- Doppler signatures in the spectrogram. The micro- Doppler signatures of different hand gestures are analyzed using Matlab. Each hand gesture is observed to contain unique spectral characteristics. Based on unique spectral characteristics, we investigate the classification of ASL essential short phrases including emergency signals. For recognizing and characterizing the presence of micro-Doppler signatures in spectrogram we explore deep convolution neural network (DCNN) algorithm. We show that the DCNN algorithm can classify different sign language gestures based on the presence of micro- Doppler signatures in the spectrogram with fairly high accuracy. Experimental results reveal that utilizing 80% of data for training, and the remaining 20% for validation purposes in DCNN algorithm a validation accuracy of 87.5% is achieved. To further improve the recognition system, we apply a very deep learning algorithm VGG-16 using transfer learning, which improves the validation accuracy to 95%.

Prakshi Sharme is a Fresno State graduate.

Fresno State author

College or School

Format

conference paper

Citation Info

Kulhandjian, H., Sharma, P., Kulhandjian, M., & D’Amours, C. (2019). Sign Language Gesture Recognition Using Doppler Radar and Deep Learning. 2019 IEEE Globecom Workshops (GC Wkshps), 1–6. https://doi.org/10.1109/GCWkshps45667.2019.9024607

Files

Kulhandjian_sharma_p1.pdf

Citation

“Sign Language Gesture Recognition Using Doppler Radar and Deep Learning,” Outstanding Faculty Publications, accessed April 27, 2024, https://facpub.library.fresnostate.edu/items/show/138.