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Dive into the research topics where Senthil Yogamani is active.

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Featured researches published by Senthil Yogamani.


electronic imaging | 2017

Deep Reinforcement Learning framework for Autonomous Driving

Ahmad El Sallab; Mohammed Abdou; Etienne Perot; Senthil Yogamani

Reinforcement learning is considered to be a strong AI paradigm which can be used to teach machines through interaction with the environment and learning from their mistakes. Despite its perceived utility, it has not yet been successfully applied in automotive applications. Motivated by the successful demonstrations of learning of Atari games and Go by Google DeepMind, we propose a framework for autonomous driving using deep reinforcement learning. This is of particular relevance as it is difficult to pose autonomous driving as a supervised learning problem due to strong interactions with the environment including other vehicles, pedestrians and roadworks. As it is a relatively new area of research for autonomous driving, we provide a short overview of deep reinforcement learning and then describe our proposed framework. It incorporates Recurrent Neural Networks for information integration, enabling the car to handle partially observable scenarios. It also integrates the recent work on attention models to focus on relevant information, thereby reducing the computational complexity for deployment on embedded hardware. The framework was tested in an open source 3D car racing simulator called TORCS. Our simulation results demonstrate learning of autonomous maneuvering in a scenario of complex road curvatures and simple interaction of other vehicles.


international conference on intelligent transportation systems | 2015

Vision-Based Driver Assistance Systems: Survey, Taxonomy and Advances

Jonathan Horgan; Ciaran Hughes; John McDonald; Senthil Yogamani

Vision-based driver assistance systems is one of the rapidly growing research areas of ITS, due to various factors such as the increased level of safety requirements in automotive, computational power in embedded systems, and desire to get closer to autonomous driving. It is a cross disciplinary area encompassing specialised fields like computer vision, machine learning, robotic navigation, embedded systems, automotive electronics and safety critical software. In this paper, we survey the list of vision based advanced driver assistance systems with a consistent terminology and propose a taxonomy. We also propose an abstract model in an attempt to formalize a top-down view of application development to scale towards autonomous driving system.


Image and Vision Computing | 2017

Computer vision in automated parking systems: Design, implementation and challenges

Markus Heimberger; Jonathan Horgan; Ciaran Hughes; John McDonald; Senthil Yogamani

Abstract Automated driving is an active area of research in both industry and academia. Automated parking, which is automated driving in a restricted scenario of parking with low speed manoeuvring, is a key enabling product for fully autonomous driving systems. It is also an important milestone from the perspective of a higher end system built from the previous generation driver assistance systems comprising of collision warning, pedestrian detection, etc. In this paper, we discuss the design and implementation of an automated parking system from the perspective of computer vision algorithms. Designing a low-cost system with functional safety is challenging and leads to a large gap between the prototype and the end product, in order to handle all the corner cases. We demonstrate how camera systems are crucial for addressing a range of automated parking use cases and also, to add robustness to systems based on active distance measuring sensors, such as ultrasonics and radar. The key vision modules which realize the parking use cases are 3D reconstruction, parking slot marking recognition, freespace and vehicle/pedestrian detection. We detail the important parking use cases and demonstrate how to combine the vision modules to form a robust parking system. To the best of the authors knowledge, this is the first detailed discussion of a systemic view of a commercial automated parking system.


arXiv: Machine Learning | 2016

End-to-End Deep Reinforcement Learning for Lane Keeping Assist.

Ahmad El Sallab; Mohammed Abdou; Etienne Perot; Senthil Yogamani


computer vision and pattern recognition | 2018

Visual SLAM for Automated Driving: Exploring the Applications of Deep Learning

Stefan Milz; Georg Arbeiter; Christian Witt; Bassam Abdallah; Senthil Yogamani


international conference on intelligent transportation systems | 2017

Deep semantic segmentation for automated driving: Taxonomy, roadmap and challenges

Mennatullah Siam; Sara Elkerdawy; Martin Jagersand; Senthil Yogamani


arXiv: Machine Learning | 2017

Real-Time Background Subtraction Using Adaptive Sampling and Cascade of Gaussians.

Bangalore Ravi Kiran; Senthil Yogamani


arXiv: Computer Vision and Pattern Recognition | 2017

MODNet: Moving Object Detection Network with Motion and Appearance for Autonomous Driving.

Mennatullah Siam; Heba Mahgoub; Mohamed Zahran; Senthil Yogamani; Martin Jagersand; Ahmad El Sallab


international conference on image processing | 2018

RTSeg: Real-time Semantic Segmentation Comparative Study

Mennatullah Siam; Mostafa Gamal; Moemen Abdel-Razek; Senthil Yogamani; Martin Jagersand


computer vision and pattern recognition | 2018

A Comparative Study of Real-Time Semantic Segmentation for Autonomous Driving

Mennatullah Siam; Mostafa Gamal; Moemen Abdel-Razek; Senthil Yogamani; Martin Jagersand; Hong Zhang

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