Title
Features And Classification Methods To Locate Deciduous Trees In Images
Abstract
We compare features and classification methods to locate deciduous trees in images. From this comparison we conclude that a back-propagation neural network achieves better classification results than the other classifiers we tested. Our analysis of the relevance of 51 features from seven feature extraction methods based on the graylevel co-occurrence matrix, Gabor filters, fractal dimension, steerable filters, the Fourier transform, entropy, and color shows that each feature contributes important information. We show how we obtain a 13-feature subset that significantly reduces the feature extraction time while retaining most of the complete feature set's power and robustness. The best subsets of features were found to be combinations of features of each of the extraction methods. Methods for classification and feature relevance determination that are based on the covariance or correlation matrix of the features (such as eigenanalyses or linear or quadratic classifiers) generally cannot be used, since even small sets of features are usually highly linearly redundant, rendering their covariance or correlation matrices too singular to be invertible. We argue that representing deciduous trees and many other objects by rich image descriptions can significantly aid their classification. We make no assumptions about the shape, location, viewpoint, viewing distance, lighting conditions, and camera parameters, and we only expect scanning methods and compression schemes to retain a `reasonable' image quality.
Publication Date
1-1-1999
Publication Title
Computer Vision and Image Understanding
Volume
75
Issue
1
Number of Pages
133-149
Document Type
Article
Personal Identifier
scopus
DOI Link
https://doi.org/10.1006/cviu.1999.0769
Copyright Status
Unknown
Socpus ID
0032688346 (Scopus)
Source API URL
https://api.elsevier.com/content/abstract/scopus_id/0032688346
STARS Citation
Haering, Niels and Da Vitoria Lobo, Niels, "Features And Classification Methods To Locate Deciduous Trees In Images" (1999). Scopus Export 1990s. 3971.
https://stars.library.ucf.edu/scopus1990/3971