DOI: 10.3390/ai7070237 ISSN: 2673-2688

Mapping License Plate Recoverability Under Extreme Viewing Angles for Opportunistic Urban Sensing

Igor Adamenko, Orpaz Ben Aharon, Yehudit Aperstein, Alexander Apartsin

Urban environments are saturated with imaging sensors deployed for purposes unrelated to vehicle identification, from ATM and dashboard cameras to pole-mounted CCTV and smartphones. We term the use of such non-purpose-built sensors for secondary inference “opportunistic sensing”; its central question is where, under uncontrolled capture conditions, AI-enabled restoration remains reliable. This paper introduces recoverability maps, a task-agnostic methodology for quantifying that boundary, and applies it to oblique-view license plate recognition (LPR). It pairs a full-grid synthetic sweep of the degradation space with two summary measures: a boundary area-under-curve for coverage and a reliability score F for the frequency and depth of interior unrecovered pockets. For LPR, the space is the oblique-angle grid [0°,89°]2 sampled by Scrambled Sobol sequences, and the utility is plate-level optical character recognition (OCR) accuracy. Within this synthetic benchmark, approximately 90–92% of the angle grid is recoverable (best single model to union of restoration arms), recovery degrades sharply beyond roughly 80° in both axes, and lateral rotations are harder to reconstruct than elevational ones. Five restoration architectures cluster within a narrow AUC band of 0.89–0.93, and share the same α/β asymmetry, so the recoverable region is set primarily by sensing geometry, with architecture affecting efficiency and interior consistency; discriminative architectures outperform generative models. The methodology is validated on real plates: on CCPD and the Brazilian legacy and Mercosur layouts of RodoSol-ALPR, restoration raises held-out extreme-angle recognition by +15 to +38 exact-match points under plate-specialized recognizers, and the discriminative-over-generative ordering reproduces on real data.

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