TORCS Dataset Papers With Code

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Descrição

TORCS (The Open Racing Car Simulator) is a driving simulator. It is capable of simulating the essential elements of vehicular dynamics such as mass, rotational inertia, collision, mechanics of suspensions, links and differentials, friction and aerodynamics. Physics simulation is simplified and is carried out through Euler integration of differential equations at a temporal discretization level of 0.002 seconds. The rendering pipeline is lightweight and based on OpenGL that can be turned off for faster training. TORCS offers a large variety of tracks and cars as free assets. It also provides a number of programmed robot cars with different levels of performance that can be used to benchmark the performance of human players and software driving agents. TORCS was built with the goal of developing Artificial Intelligence for vehicular control and has been used extensively by the machine learning community ever since its inception.
TORCS Dataset  Papers With Code
Visual TORCS network controller pipeline. At each time-step a raw 64×64
TORCS Dataset  Papers With Code
Virtual to Real Reinforcement Learning for Autonomous Driving
TORCS Dataset  Papers With Code
Decision Making Papers With Code
TORCS Dataset  Papers With Code
cTDaR Dataset Papers With Code
TORCS Dataset  Papers With Code
PDF] Distributed Approach for implementation of A3C on TORCS
TORCS Dataset  Papers With Code
attention_and_driving/self-driving.md at 2.0 · ykotseruba/attention_and_driving · GitHub
TORCS Dataset  Papers With Code
SUMMIT Dataset Papers With Code
TORCS Dataset  Papers With Code
TO-Scene: A Large-scale Dataset for Understanding 3D Tabletop Scenes
TORCS Dataset  Papers With Code
Matthew Muckley on LinkedIn: Announcing version 2.0 of the fastMRI dataset · Discussion #284 ·…
TORCS Dataset  Papers With Code
Machine Learning Datasets
TORCS Dataset  Papers With Code
PDF) Deep Learning and Control Algorithms of Direct Perception for Autonomous Driving
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