Home /Research /Reinforcement learning in computer vision
PERCEPTION

Reinforcement learning in computer vision

Alexander Bernstein, Evgeny Burnaev

Year
2018
Citations
26

Abstract

Nowadays, machine learning has become one of the basic technologies used in solving various computer vision tasks such as feature detection, image segmentation, object recognition and tracking. In many applications, various complex systems such as robots are equipped with visual sensors from which they learn state of surrounding environment by solving corresponding computer vision tasks. Solutions of these tasks are used for making decisions about possible future actions. It is not surprising that when solving computer vision tasks we should take into account special aspects of their subsequent application in model-based predictive control. Reinforcement learning is one of modern machine learning technologies in which learning is carried out through interaction with the environment. In recent years, Reinforcement learning has been used both for solving such applied tasks as processing and analysis of visual information, and for solving specific computer vision problems such as filtering, extracting image features, localizing objects in scenes, and many others. The paper describes shortly the Reinforcement learning technology and its use for solving computer vision problems.

Keywords

Reinforcement learningComputer scienceArtificial intelligenceRobot learningRobotFeature (linguistics)Machine visionCognitive neuroscience of visual object recognitionEye trackingComputer vision

Related papers

Browse all PERCEPTION papers