Title :
Comparison of Machine Learned Image Interpretation Systems in the Domain of Forestry
Author :
Levner, Ilya ; Bulitko, Vadim
Author_Institution :
Dept. of Comput. Sci., Alberta Univ., Edmonton, Alta.
Abstract :
Automated image interpretation is an important task with numerous applications. Until recently, designing such systems required extensive subject matter and computer vision expertise resulting in poor cross-domain portability and expensive maintenance. Recently, a machine-learned system ADORE (adaptive object recognition) was successfully applied in an aerial image interpretation domain. In this paper we evaluate an extended version of this system, applied for the first time to a natural image interpretation domain. Performance of MR ADORE system is compared to the hierarchical hidden Markov random field (HHRMF) algorithm for supervised image annotation. We show that a hybrid system, easily constructed by utilizing the HHMRF models as operators within MR ADORE, performs significantly better than either of the systems on their own. To the best of our knowledge this is the first successful case of learning both vision operators and an adaptive control policy guiding their application in a single system
Keywords :
computer vision; hidden Markov models; learning (artificial intelligence); object recognition; vegetation mapping; adaptive object recognition; forestry domain; hierarchical hidden Markov random field; image interpretation system; machine-learned system; supervised image annotation; Application software; Computer vision; Control systems; Forestry; Hidden Markov models; Humans; Machine learning; Object recognition; Pixel; Vegetation mapping; Markov decision models in vision; adaptive image interpretation; machine learning; object recognition; performance evaluation; remote-sensing; segmentation;
Conference_Titel :
Application of Computer Vision, 2005. WACV/MOTIONS '05 Volume 1. Seventh IEEE Workshops on
Conference_Location :
Breckenridge, CO
Print_ISBN :
0-7695-2271-8
DOI :
10.1109/ACVMOT.2005.37