Depth as Prior Knowledge for Object Detection
Moussa Kassem Sbeyti, Nadja Klein

TL;DR
This paper introduces DepthPrior, a depth-informed training framework for object detection that improves small object detection without modifying detector architectures or adding sensors.
Contribution
It provides a theoretical and empirical analysis of depth's impact on detection and proposes a novel depth prior framework with training and inference techniques.
Findings
Up to +9% mAP for small objects
Up to +7% mAR for small objects
High inference recovery rate of 95:1
Abstract
Detecting small and distant objects remains challenging for object detectors due to scale variation, low resolution, and background clutter. Safety-critical applications require reliable detection of these objects for safe planning. Depth information can improve detection, but existing approaches require complex, model-specific architectural modifications. We provide a theoretical analysis followed by an empirical investigation of the depth-detection relationship. Together, they explain how depth causes systematic performance degradation and why depth-informed supervision mitigates it. We introduce DepthPrior, a framework that uses depth as prior knowledge rather than as a fused feature, providing comparable benefits without modifying detector architectures. DepthPrior consists of Depth-Based Loss Weighting (DLW) and Depth-Based Loss Stratification (DLS) during training, and Depth-Aware…
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Taxonomy
TopicsAdvanced Neural Network Applications · Domain Adaptation and Few-Shot Learning · Infrared Target Detection Methodologies
