Deep generative cross-modal on-body accelerometer data synthesis from videos
Shibo Zhang, Nabil Alshurafa
Abstract
Human activity recognition (HAR) based on wearable sensors has brought tremendous benefit to several industries ranging from healthcare to entertainment. However, to build reliable machine-learned models from wearables, labeled on-body sensor datasets obtained from real-world settings are needed. It is often prohibitively expensive to obtain large-scale, labeled on-body sensor datasets from real-world deployments. The lack of labeled datasets is a major obstacle in the wearable sensor-based activity recognition community. To overcome this problem, I aim to develop two deep generative cross-modal architectures to synthesize accelerometer data streams from video data streams. In the proposed approach, a conditional generative adversarial network (cGAN) is first used to generate sensor data conditioned on video data. Then, a conditional variational autoencoder (cVAE)-cGAN is proposed to further improve representation of the data. The effectiveness and efficacy of the proposed methods will be evaluated through two popular applications in HAR: eating recognition and physical activity recognition. Extensive experiments will be conducted on public sensor-based activity recognition datasets by building models with synthetic data and comparing the models against those trained from real sensor data. This work aims to expand labeled on-body sensor data, by generating synthetic on-body sensor data from video, which will equip the community with methods to transfer labels from video to on-body sensors.