Seeding Deep Learning using Wireless Localization
Deep learning is often constrained by the lack of large, diverse labeled training datasets, especially images captured in the wild. We believe advances in wireless localization, working in unison with cameras, can produce automated labeling of targets in videos captured in the wild. Using pedestrian detection as a case study, we demonstrate the feasibility, benefits, and challenges of a possible solution using WiFi localization. To enable the automated generation of labeled training data, our work calls for new technical development on passive localization, mobile data analytics, and error-resilient ML models, as well as design issues in user privacy policies.
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