CVAug 27, 2021

MultiSiam: Self-supervised Multi-instance Siamese Representation Learning for Autonomous Driving

arXiv:2108.12178v161 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses the problem of labeled data scarcity in autonomous driving by developing a domain-specific self-supervised learning method, though it is incremental as it builds on existing SSL techniques for a specific application.

The paper tackles the challenge of applying self-supervised learning to multi-instance datasets like street scenes by proposing MultiSiam, which improves generalization and achieves state-of-the-art transfer performance on autonomous driving benchmarks such as Cityscapes and BDD100K, outperforming existing SSL methods like MoCo and BYOL.

Autonomous driving has attracted much attention over the years but turns out to be harder than expected, probably due to the difficulty of labeled data collection for model training. Self-supervised learning (SSL), which leverages unlabeled data only for representation learning, might be a promising way to improve model performance. Existing SSL methods, however, usually rely on the single-centric-object guarantee, which may not be applicable for multi-instance datasets such as street scenes. To alleviate this limitation, we raise two issues to solve: (1) how to define positive samples for cross-view consistency and (2) how to measure similarity in multi-instance circumstances. We first adopt an IoU threshold during random cropping to transfer global-inconsistency to local-consistency. Then, we propose two feature alignment methods to enable 2D feature maps for multi-instance similarity measurement. Additionally, we adopt intra-image clustering with self-attention for further mining intra-image similarity and translation-invariance. Experiments show that, when pre-trained on Waymo dataset, our method called Multi-instance Siamese Network (MultiSiam) remarkably improves generalization ability and achieves state-of-the-art transfer performance on autonomous driving benchmarks, including Cityscapes and BDD100K, while existing SSL counterparts like MoCo, MoCo-v2, and BYOL show significant performance drop. By pre-training on SODA10M, a large-scale autonomous driving dataset, MultiSiam exceeds the ImageNet pre-trained MoCo-v2, demonstrating the potential of domain-specific pre-training. Code will be available at https://github.com/KaiChen1998/MultiSiam.

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