A model-based approach for rigid object recognition
Access Status
Authors
Date
2006Type
Metadata
Show full item recordCitation
Source Title
Source Conference
ISBN
School
Collection
Abstract
Most object recognition systems require large databases of real images for classifier training. To collect real images for this purpose is a difficult and expensive process. This paper introduces a unified framework based on the creation and use of synthetic images for training various classifiers to achieve recognition of real-world objects. A 3D model of the object (i.e. trolley in this case) is constructed from a minimum of two photographs. The constructed 3D model is used to automatically generate the relevant synthetic images that are subsequently used to train the Adaboost and support vector machine-based recognition systems. Experimental results obtained are very encouraging suggesting that synthetically generated images generated by our approach can augment the real training samples used in current recognition systems
Related items
Showing items related by title, author, creator and subject.
-
Fang, W.; Ding, L.; Zhong, B.; Love, Peter; Luo, H. (2018)© 2018 Elsevier Ltd Detecting the presence of workers, plant, equipment, and materials (i.e. objects) on sites to improve safety and productivity has formed an integral part of computer vision-based research in construction. ...
-
Hayat, M.; Bennamoun, M.; An, Senjian (2015)Image set classification finds its applications in a number of real-life scenarios such as classification from surveillance videos, multi-view camera networks and personal albums. Compared with single image based ...
-
Xu, Xiang; Liu, Wan-Quan; Li, Ling (2014)In surveillance systems, the captured facial images are often very small and different from the low-resolution images down-sampled from high-resolution facial images. They generally lead to low performance in face ...