Sui Paul Ang
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Papers from this author
Real-time Pedestrian Lane Detection for Assistive Navigation using Neural Architecture Search
Sui Paul Ang, Son Lam Phung, Thi Nhat Anh Nguyen, Soan T. M. Duong, Abdesselam Bouzerdoum, Mark M. Schira
Auto-TLDR; Real-Time Pedestrian Lane Detection Using Deep Neural Networks
Abstract Slides Poster Similar
Pedestrian lane detection is a core component in many assistive and autonomous navigation systems. These systems are usually deployed on environments that require real-time processing. Many state-of-the-art deep neural networks only focus on detection accuracy but not inference speed. Hence, without further modifications, they are not suitable for real-time applications. Furthermore, the task of designing a high-performing deep neural network is time-consuming and requires experience. To tackle these issues, we propose a neural architecture search algorithm that can find the best deep network for pedestrian lane detection automatically. The proposed method searches in a network-level space using the gradient descent algorithm. Evaluated on a dataset of 5,000 images, the models derived by the proposed algorithm achieve comparable segmentation accuracy, while being significantly faster than other state-of-the-art methods. The proposed method has been successfully implemented as a real-time pedestrian lane detection tool.