A Task-Agnostic Algebraic Integrity Metric for Event-Camera Streams Toward SOTIF-Compliant Perception using Pearson Correlation Coefficient
Arthur de Miranda Neto

TL;DR
This paper introduces a task-agnostic algebraic metric based on Pearson Correlation Coefficient for evaluating event-camera stream integrity, supporting safety certification standards like SOTIF.
Contribution
It formalizes three PCC-based metrics for event stream quality assessment across different representations, enabling task-independent perception validation.
Findings
Metrics effectively detect integrity anomalies in synthetic event streams.
The framework establishes a formal link between event contrast mechanisms and PCC-based change detection.
Demonstrated the metrics' sensitivity in a tunnel-dip integrity scenario.
Abstract
Event cameras have emerged as a high-bandwidth, low-latency sensing modality for safety-critical perception in automated driving systems (ADS), offering microsecond temporal resolution, 120-140 dB dynamic range, and intrinsic absence of motion blur. However, no task-agnostic quality metric currently operates directly on the asynchronous event stream: state-of-the-art proxies require a downstream task (e.g., detection accuracy, tracking error) to assess stream integrity, which is incompatible with the certification requirements of ISO 21448 (SOTIF) and ISO/PAS 8800:2024. The recent BiasBench benchmark (CVPR 2025) explicitly identifies this gap. This work proposes a unified algebraic framework that lifts the Pearson Correlation Coefficient (PCC), historically used in two prior works for redundancy filtering and ROI selection on frame-based images, to the three standard event…
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