PASS: Path-selective State Space Model for Event-based Recognition
Jiazhou Zhou, Kanghao Chen, Lei Zhang, Lin Wang

TL;DR
PASS introduces an adaptive spatiotemporal event modeling framework using state space models and a novel event aggregation module, significantly improving frequency generalization and recognition accuracy in event-based sensors.
Contribution
The paper proposes PASS, a novel framework with PEAS and MSG modules, enabling superior event representation and frequency generalization for event-based recognition tasks.
Findings
Outperforms prior methods on five datasets
Shows strong generalization across varying inference frequencies
Maintains higher accuracy with less drop compared to baselines
Abstract
Event cameras are bio-inspired sensors that capture intensity changes asynchronously with distinct advantages, such as high temporal resolution. Existing methods for event-based object/action recognition predominantly sample and convert event representation at every fixed temporal interval (or frequency). However, they are constrained to processing a limited number of event lengths and show poor frequency generalization, thus not fully leveraging the event's high temporal resolution. In this paper, we present our PASS framework, exhibiting superior capacity for spatiotemporal event modeling towards a larger number of event lengths and generalization across varying inference temporal frequencies. Our key insight is to learn adaptively encoded event features via the state space models (SSMs), whose linear complexity and generalization on input frequency make them ideal for processing high…
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Taxonomy
TopicsNeural Networks and Applications
