Computer vision and pattern recognition in environmental informatics
Author(s)
Bibliographic Information
Computer vision and pattern recognition in environmental informatics
(Advances in environmental engineering and green technologies (AEEGT) book series)(Premier reference source)
Information Science Reference, c2016
- : hardcover
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Note
Includes bibliographical references (p. 360-394) and index
Description and Table of Contents
Description
Computer Vision and Pattern Recognition (CVPR) together play an important role in the processes involved in environmental informatics due to their pervasive, non-destructive, effective, and efficient natures. As a result, CVPR has made significant contributions to the field of environmental informatics by enabling multi-modal data fusion and feature extraction, supporting fast and reliable object detection and classification, and mining the intrinsic relationship between different aspects of environmental data.
Computer Vision and Pattern Recognition in Environmental Informatics describes a number of methods and tools for image interpretation and analysis, which enables observation, modelling, and understanding of environmental targets. In addition to case studies on monitoring and modeling plant, soil, insect, and aquatic animals, this publication includes discussions on innovative new ideas related to environmental monitoring, automatic fish segmentation and recognition, real-time motion tracking systems, sparse coding and decision fusion, and cell phone image-based classification and provides useful references for professionals, researchers, engineers, and students with various backgrounds within a multitude of communities.
by "Nielsen BookData"