Visual Saliency Detection in Advanced Driver Assistance Systems
Francesco Rundo, Michael Sebastian Rundo, Concetto Spampinato

TL;DR
This paper presents an integrated automotive system combining visual saliency detection, driver drowsiness monitoring via biosensors, and scene understanding using deep learning, to enhance vehicle safety.
Contribution
It introduces a novel embedded platform implementation that fuses saliency-based scene analysis with driver drowsiness detection using deep neural networks.
Findings
Effective driver attention assessment correlates with scene saliency.
The system operates in real-time on embedded automotive hardware.
Experimental validation shows improved safety monitoring capabilities.
Abstract
Visual Saliency refers to the innate human mechanism of focusing on and extracting important features from the observed environment. Recently, there has been a notable surge of interest in the field of automotive research regarding the estimation of visual saliency. While operating a vehicle, drivers naturally direct their attention towards specific objects, employing brain-driven saliency mechanisms that prioritize certain elements over others. In this investigation, we present an intelligent system that combines a drowsiness detection system for drivers with a scene comprehension pipeline based on saliency. To achieve this, we have implemented a specialized 3D deep network for semantic segmentation, which has been pretrained and tailored for processing the frames captured by an automotive-grade external camera. The proposed pipeline was hosted on an embedded platform utilizing the…
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Taxonomy
TopicsSleep and Work-Related Fatigue
