Litcius/Paper detail

Pedestrian Detection for Autonomous Cars: Inference Fusion of Deep Neural Networks

Muhammad Mobaidul Islam, Abdullah Al Redwan Newaz, Ali Karimoddini

2022IEEE Transactions on Intelligent Transportation Systems22 citationsDOI

Abstract

Network fusion has been recently explored as an approach for improving pedestrian detection performance. However, most existing fusion methods suffer from runtime efficiency, modularity, scalability, and maintainability due to the complex structure of the entire fused models, their end-to-end training requirements, and sequential fusion process. Addressing these challenges, this paper proposes a novel fusion framework that combines asymmetric inferences from object detectors and semantic segmentation networks for jointly detecting multiple pedestrians. This is achieved by introducing a consensus-based scoring method that fuses pair-wise pixel-relevant information from the object detector and the semantic segmentation network to boost the final confidence scores. The parallel implementation of the object detection and semantic segmentation networks in the proposed framework entails a low runtime overhead. The efficiency and robustness of the proposed fusion framework are extensively evaluated by fusing different state-of-the-art pedestrian detectors and semantic segmentation networks on a public dataset. The generalization of fused models is also examined on new cross pedestrian data collected through an autonomous car. Results show that the proposed fusion method significantly improves detection performance while achieving competitive runtime efficiency.

Topics & Concepts

Computer sciencePedestrian detectionSegmentationArtificial intelligenceRobustness (evolution)Object detectionScalabilityInferenceSensor fusionData miningMachine learningComputer visionPedestrianEngineeringDatabaseTransport engineeringChemistryBiochemistryGeneAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsAutonomous Vehicle Technology and Safety