Computer Vision in Vehicle Technology: Land, Sea, and Air

Computer Vision in Vehicle Technology: Land, Sea, and Air

作者:
出版社: Wiley
出版在: 2017-04-17
ISBN-13: 9781118868072
ISBN-10: 1118868072
裝訂格式: Hardcover
總頁數: 216 頁





內容描述


A unified view of the use of computer vision technology for different types of vehicles
Computer Vision in Vehicle Technology focuses on computer vision as on-board technology, bringing together fields of research where computer vision is progressively penetrating: the automotive sector, unmanned aerial and underwater vehicles. It also serves as a reference for researchers of current developments and challenges in areas of the application of computer vision, involving vehicles such as advanced driver assistance (pedestrian detection, lane departure warning, traffic sign recognition), autonomous driving and robot navigation (with visual simultaneous localization and mapping) or unmanned aerial vehicles (obstacle avoidance, landscape classification and mapping, fire risk assessment).
The overall role of computer vision for the navigation of different vehicles, as well as technology to address on-board applications, is analysed.
Key features:

Presents the latest advances in the field of computer vision and vehicle technologies in a highly informative and understandable way, including the basic mathematics for each problem.
Provides a comprehensive summary of the state of the art computer vision techniques in vehicles from the navigation and the addressable applications points of view.
Offers a detailed description of the open challenges and business opportunities for the immediate future in the field of vision based vehicle technologies.

This is essential reading for computer vision researchers, as well as engineers working in vehicle technologies, and students of computer vision.




相關書籍

Hands-On Machine Learning with Azure: Build powerful models with cognitive machine learning and artificial intelligence

作者 Thomas K Abraham Parashar Shah Jen Stirrup Lauri Lehman Anindita Basak

2017-04-17

人工智能技術應用導論

作者 聶明

2017-04-17

基於 Spark 的下一代機器學習:XGBoost、LightGBM、Spark NLP 與 Keras 分佈式深度學習實例

作者 Butch Quinto

2017-04-17