Are Labels Needed for Incremental Instance Learning?

01/26/2023
by   Mert Kilickaya, et al.
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In this paper, we learn to classify visual object instances, incrementally and via self-supervision (self-incremental). Our learner observes a single instance at a time, which is then discarded from the dataset. Incremental instance learning is challenging, since longer learning sessions exacerbate forgetfulness, and labeling instances is cumbersome. We overcome these challenges via three contributions: i). We propose VINIL, a self-incremental learner that can learn object instances sequentially, ii). We equip VINIL with self-supervision to by-pass the need for instance labelling, iii). We compare VINIL to label-supervised variants on two large-scale benchmarks <cit.>, and show that VINIL significantly improves accuracy while reducing forgetfulness.

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