Optimal OnTheFly Feedback Control of Event Sensors
Valery Vishnevskiy, Greg Burman, Sebastian Kozerke, Diederik Paul, Moeys

TL;DR
This paper introduces a data-driven, dynamic feedback control method for event-based vision sensors that optimizes activation thresholds for improved video reconstruction, balancing quality and event rate.
Contribution
It proposes an end-to-end trained control scheme for event sensors that adapts thresholds based on scene dynamics and target event rates, enhancing reconstruction performance.
Findings
Outperforms fixed threshold schemes by 6-12% in LPIPS metric
Reduces event rate by 49% while maintaining quality
Provides interpretable sampling strategies reflecting scene characteristics
Abstract
Event-based vision sensors produce an asynchronous stream of events which are triggered when the pixel intensity variation exceeds a predefined threshold. Such sensors offer significant advantages, including reduced data redundancy, micro-second temporal resolution, and low power consumption, making them valuable for applications in robotics and computer vision. In this work, we consider the problem of video reconstruction from events, and propose an approach for dynamic feedback control of activation thresholds, in which a controller network analyzes the past emitted events and predicts the optimal distribution of activation thresholds for the following time segment. Additionally, we allow a user-defined target peak-event-rate for which the control network is conditioned and optimized to predict per-column activation thresholds that would eventually produce the best possible video…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms
