Publication | Open Access
Spatiotemporal features for asynchronous event-based data
48
Citations
50
References
2015
Year
Event-based VisionEvent CameraEngineeringAsynchronous Event-based DataSpatiotemporal DatabaseData SciencePattern RecognitionEvent-based Vision SensorsInput Signal ChangesVision SensorVisual Information ProcessingVideo TransformerVision RecognitionMachine VisionTemporal Pattern RecognitionComputer ScienceDeep LearningComputer VisionSpatio-temporal Stream Processing
Bio-inspired asynchronous event-based vision sensors are currently introducing a paradigm shift in visual information processing. These new sensors rely on a stimulus-driven principle of light acquisition similar to biological retinas. They are event-driven and fully asynchronous, thereby reducing redundancy and encoding exact times of input signal changes, leading to a very precise temporal resolution. Approaches for higher-level computer vision often rely on the reliable detection of features in visual frames, but similar definitions of features for the novel dynamic and event-based visual input representation of silicon retinas have so far been lacking. This article addresses the problem of learning and recognizing features for event-based vision sensors, which capture properties of truly spatiotemporal volumes of sparse visual event information. A novel computational architecture for learning and encoding spatiotemporal features is introduced based on a set of predictive recurrent reservoir networks, competing via winner-take-all selection. Features are learned in an unsupervised manner from real-world input recorded with event-based vision sensors. It is shown that the networks in the architecture learn distinct and task-specific dynamic visual features, and can predict their trajectories over time.
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