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Zero-Shot Day-Night Domain Adaptation with a Physics Prior

About

We explore the zero-shot setting for day-night domain adaptation. The traditional domain adaptation setting is to train on one domain and adapt to the target domain by exploiting unlabeled data samples from the test set. As gathering relevant test data is expensive and sometimes even impossible, we remove any reliance on test data imagery and instead exploit a visual inductive prior derived from physics-based reflection models for domain adaptation. We cast a number of color invariant edge detectors as trainable layers in a convolutional neural network and evaluate their robustness to illumination changes. We show that the color invariant layer reduces the day-night distribution shift in feature map activations throughout the network. We demonstrate improved performance for zero-shot day to night domain adaptation on both synthetic as well as natural datasets in various tasks, including classification, segmentation and place recognition.

Attila Lengyel, Sourav Garg, Michael Milford, Jan C. van Gemert• 2021

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-100 (test)
Accuracy42.27
3518
Image ClassificationCIFAR-10 (test)
Accuracy77.49
3381
Image ClassificationSTL-10 (test)
Accuracy81.88
357
Image ClassificationStanford Cars (test)
Accuracy81.56
306
Image ClassificationImageNet (test)
Top-1 Accuracy65.95
291
Image RetrievalRevisited Oxford (ROxf) (Medium)
mAP75.1
124
Image ClassificationFlowers-102 (test)
Top-1 Accuracy75.05
124
Image RetrievalRevisited Paris (RPar) (Medium)
mAP79.4
100
Image RetrievalParis Revisited (Medium)
mAP79.4
63
Image ClassificationOxford-IIIT Pet (test)
Overall Accuracy64.23
59
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