DeepLanes: End-To-End Lane Position Estimation using Deep Neural Networks
Surjya Ray
Wednesday, October 24, 2018
Noon1 p.m.
Wegmans Hall Room 1400
Abstract:
Camera-based lane detection algorithms are one of the key enablers for many semi-autonomous and fully autonomous systems, ranging from lane keep assist to level-5 automated vehicles. Positioning a vehicle between lane boundaries is the core navigational aspect of a self-driving car. Even though this should be trivial, given the clarity of lane markings on most standard roadway systems, the process is typically mired with tedious pre-processing and computational effort. We present an approach to estimate lane positions directly using a deep neural network that operates on images from laterally-mounted down-facing cameras. To create a diverse training set, we present a method to generate semi-artificial images. Besides the ability to distinguish whether there is a lane-marker present or not, the network is able to estimate the position of a lane marker with sub-centimeter accuracy at an average of 100 frames/s on an embedded automotive platform, requiring no pre- or post-processing. This system can be used not only to estimate lane position for navigation, but also provide an efficient way to validate the robustness of driver-assist features which depend on lane information.
News:
Bio:
Surjya Ray is a research scientist at the Autonomous Vehicles Department of Ford Greenfield Labs at Palo Alto. Dr. Ray received a B.E. degree in Electronics and Telecommunications Engineering from Jadavpur University, Calcutta, India in 2006 and M.S. and PhD degrees in Electrical Engineering from Ïã½¶ÊÓÆµ, NY, in 2009 and 2013, respectively. His current research interests include applications of machine learning and computer vision in autonomous driving and advanced driver-assistance systems (ADAS). His other research interests lie in the areas of connected vehicles, wireless communications and networking, and the optimization of communication networks.
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