Litcius/Paper detail

Bottom-up and Layerwise Domain Adaptation for Pedestrian Detection in Thermal Images

My Kieu, Andrew D. Bagdanov, Marco Bertini

2021ACM Transactions on Multimedia Computing Communications and Applications55 citationsDOIOpen Access PDF

Abstract

Pedestrian detection is a canonical problem for safety and security applications, and it remains a challenging problem due to the highly variable lighting conditions in which pedestrians must be detected. This article investigates several domain adaptation approaches to adapt RGB-trained detectors to the thermal domain. Building on our earlier work on domain adaptation for privacy-preserving pedestrian detection, we conducted an extensive experimental evaluation comparing top-down and bottom-up domain adaptation and also propose two new bottom-up domain adaptation strategies. For top-down domain adaptation, we leverage a detector pre-trained on RGB imagery and efficiently adapt it to perform pedestrian detection in the thermal domain. Our bottom-up domain adaptation approaches include two steps: first, training an adapter segment corresponding to initial layers of the RGB-trained detector adapts to the new input distribution; then, we reconnect the adapter segment to the original RGB-trained detector for final adaptation with a top-down loss. To the best of our knowledge, our bottom-up domain adaptation approaches outperform the best-performing single-modality pedestrian detection results on KAIST and outperform the state of the art on FLIR.

Topics & Concepts

Computer sciencePedestrian detectionRGB color modelDetectorArtificial intelligenceLeverage (statistics)Adaptation (eye)Computer visionDomain adaptationDomain (mathematical analysis)Adapter (computing)PedestrianEngineeringTelecommunicationsComputer hardwareClassifier (UML)OpticsMathematicsMathematical analysisTransport engineeringPhysicsAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsImage Enhancement Techniques