TL;DR
The paper introduces SVL, a spike-based vision-language pretraining framework that enhances the 3D understanding capabilities of SNNs, achieving state-of-the-art results in zero-shot classification and multimodal tasks.
Contribution
SVL is the first scalable, generalizable, and hardware-friendly pretraining framework that significantly improves SNNs' performance in open-world 3D understanding tasks.
Findings
Achieves 85.4% top-1 accuracy in zero-shot 3D classification.
Outperforms prior SNNs on downstream tasks like 3D classification, DVS action recognition, detection, and segmentation.
Enables SNNs to perform open-world 3D question answering, sometimes surpassing ANNs.
Abstract
Spiking Neural Networks (SNNs) provide an energy-efficient way to extract 3D spatio-temporal features. However, existing SNNs still exhibit a significant performance gap compared to Artificial Neural Networks (ANNs) due to inadequate pre-training strategies. These limitations manifest as restricted generalization ability, task specificity, and a lack of multimodal understanding, particularly in challenging tasks such as multimodal question answering and zero-shot 3D classification. To overcome these challenges, we propose a Spike-based Vision-Language (SVL) pretraining framework that empowers SNNs with open-world 3D understanding while maintaining spike-driven efficiency. SVL introduces two key components: (i) Multi-scale Triple Alignment (MTA) for label-free triplet-based contrastive learning across 3D, image, and text modalities, and (ii) Re-parameterizable Vision-Language Integration…
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