2021
DOI: 10.48550/arxiv.2107.02067
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Distance-based Hyperspherical Classification for Multi-source Open-Set Domain Adaptation

Abstract: Vision systems trained in closed-world scenarios will inevitably fail when presented with new environmental conditions, new data distributions and novel classes at deployment time. How to move towards open-world learning is a long standing research question, but the existing solutions mainly focus on specific aspects of the problem (single domain Open-Set, multi-domain Closed-Set), or propose complex strategies which combine multiple losses and manually tuned hyperparameters. In this work we tackle multi-sourc… Show more

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