4.7 Article

Spike-Based Motion Estimation for Object Tracking Through Bio-Inspired Unsupervised Learning

期刊

IEEE TRANSACTIONS ON IMAGE PROCESSING
卷 32, 期 -, 页码 335-349

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2022.3228168

关键词

Neuromorphic vision sensor; bio-inspired; unsu-pervised learning; short-term plasticity; spike-timing-dependent plasticity; motion estimation; spiking camera; high-speed object tracking

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Neuromorphic vision sensors are suitable for capturing high-speed motion, but efficiently tracking such objects is still challenging. We propose a bio-inspired unsupervised learning framework that uses the spatiotemporal information of the sensor's events/spikes to capture motion patterns. Our model filters redundant signals and extracts motion patterns using dynamic adaption and spike-timing-dependent plasticity. Combined with clustering and filtering algorithms, it can effectively track multiple targets in extreme scenes.
Neuromorphic vision sensors, whose pixels output events/spikes asynchronously with a high temporal resolution according to the scene radiance change, are naturally appropriate for capturing high-speed motion in the scenes. However, how to utilize the events/spikes to smoothly track high-speed moving objects is still a challenging problem. Existing approaches either employ time-consuming iterative optimization, or require large amounts of labeled data to train the object detector. To this end, we propose a bio-inspired unsupervised learning framework, which takes advantage of the spatiotemporal information of events/spikes generated by neuromorphic vision sensors to capture the intrinsic motion patterns. Without off-line training, our models can filter the redundant signals with dynamic adaption module based on short-term plasticity, and extract the motion patterns with motion estimation module based on the spike-timing-dependent plasticity. Combined with the spatiotemporal and motion information of the filtered spike stream, the traditional DBSCAN clustering algorithm and Kalman filter can effectively track multiple targets in extreme scenes. We evaluate the proposed unsupervised framework for object detection and tracking tasks on synthetic data, publicly available event-based datasets, and spiking camera datasets. The experiment results show that the proposed model can robustly detect and smoothly track the moving targets on various challenging scenarios and outperforms state-of-the-art approaches.

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