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Sketch3T: Test-Time Training for Zero-Shot SBIR

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Zero-shot sketch-based image retrieval typically asks for a trained model to be applied as is to unseen categories. In this paper, we question to argue that this setup by definition is not compatible with the inherent abstract and subjective nature of sketches, i.e., the model might transfer well to new categories, but will not understand sketches existing in different test-time distribution as a result. We thus extend ZS-SBIR asking it to transfer to both categories and sketch distributions. Our key contribution is a test-time training paradigm that can adapt using just one sketch. Since there is no paired photo, we make use of a sketch raster-vector reconstruction module as a self-supervised auxiliary task. To maintain the fidelity of the trained cross-modal joint embedding during test-time update, we design a novel meta-learning based training paradigm to learn a separation between model updates incurred by this auxiliary task from those off the primary objective of discriminative learning. Extensive experiments show our model to outperform state of-the-arts, thanks to the proposed test-time adaption that not only transfers to new categories but also accommodates to new sketching styles.

Aneeshan Sain, Ayan Kumar Bhunia, Vaishnav Potlapalli, Pinaki Nath Chowdhury, Tao Xiang, Yi-Zhe Song• 2022

Related benchmarks

TaskDatasetResultRank
Zero-Shot Sketch-Based Image RetrievalTU-Berlin
mAP@all50.7
18
Sketch-based image retrievalTU-Berlin Ext
mAP50.7
17
Sketch-based image retrievalSketchy Ext
mAP0.575
17
Zero-Shot Sketch-Based Image RetrievalSketchy
mAP@2000.579
17
Categorical Sketch-Based Image RetrievalSketchy extended (unseen)
mAP@all57.5
9
Categorical Sketch-Based Image RetrievalTU Berlin extended (unseen)
mAP@all50.7
9
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