SSAL: Synergizing between Self-Training and Adversarial Learning for Domain Adaptive Object Detection
–Neural Information Processing Systems
We study adapting trained object detectors to unseen domains manifesting significant variations of object appearance, viewpoints and backgrounds. Most current methods align domains by either using image or instance-level feature alignment in an adversarial fashion. This often suffers due to the presence of unwanted background and as such lacks class-specific alignment. A common remedy to promote class-level alignment is to use high confidence predictions on the unlabelled domain as pseudo labels. These high confidence predictions are often fallacious since the model is poorly calibrated under domain shift.
Neural Information Processing Systems
Jan-18-2025, 23:56:41 GMT
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