Litcius/Paper detail

Soft Spatial Attention-Based Multimodal Driver Action Recognition Using Deep Learning

Imen Jegham, Anouar Ben Khalifa, Ihsen Alouani, Mohamed Ali Mahjoub

2020IEEE Sensors Journal59 citationsDOI

Abstract

Driver behaviors and decisions are crucial factors for on-road driving safety. With a precise driver behavior monitoring system, traffic accidents and injuries can be significantly reduced. However, understanding human behaviors in real-world driving settings is a challenging task because of the uncontrolled conditions including illumination variation, occlusion, and dynamic and cluttered background. In this paper, a Kinect sensor, which provides multimodal signals, is adopted as a driver monitoring sensor to recognize safe driving and common secondary most distracting in-vehicle actions. We propose a novel soft spatial attention-based network named the Depth-based Spatial Attention network (DSA), which adds a cognitive process to deep network by selectively focusing on the driver's silhouette and motion in the cluttered driving scene. In fact, at each time t, we introduce a new weighted RGB frame based on an attention model designed using a depth frame. The final classification accuracy is substantially enhanced compared to the state-of-the-art results with an achieved improvement of up to 27%.

Topics & Concepts

Computer scienceArtificial intelligenceRGB color modelProcess (computing)Frame (networking)SilhouetteComputer visionTask (project management)Deep learningAdvanced driver assistance systemsEngineeringOperating systemSystems engineeringTelecommunicationsHuman Pose and Action RecognitionVideo Surveillance and Tracking MethodsAutonomous Vehicle Technology and Safety