The accuracy of a supervised image classification is a function of the training data used in its generation. It is, therefore, critical that the training stage of a supervised classification is designed to provide the necessary information. Guidance on the design of the training stage of a classific
Training set size requirements for the classification of a specific class
β Scribed by Giles M. Foody; Ajay Mathur; Carolina Sanchez-Hernandez; Doreen S Boyd
- Publisher
- Elsevier Science
- Year
- 2006
- Tongue
- English
- Weight
- 397 KB
- Volume
- 104
- Category
- Article
- ISSN
- 0034-4257
No coin nor oath required. For personal study only.
β¦ Synopsis
The design of the training stage of a supervised classification should account for the properties of the classifier to be used. Consideration of the way the classifier operates may enable the training stage to be designed in a manner which ensures that the aim of the classification is satisfied with the use of a small, inexpensive, training set. It may, therefore, be possible to reduce the training set size requirements from that generally expected with the use of standard heuristics. Substantial reductions in training set size may be possible if interest is focused on a single class. This is illustrated for mapping cotton in north-western India by support vector machine type classifiers. Four approaches to reducing training set size were used: intelligent selection of the most informative training samples, selective class exclusion, acceptance of imprecise descriptions for spectrally distinct classes and the adoption of a one-class classifier. All four approaches were able to reduce the training set size required considerably below that suggested by conventional widely used heuristics without significant impact on the accuracy with which the class of interest was classified. For example, reductions in training set size of βΌ 90% from that suggested by a conventional heuristic are reported with the accuracy of cotton classification remaining nearly constant at βΌ95% and βΌ 97% from the user's and producer's perspectives respectively.
π SIMILAR VOLUMES
The problem of determining the size of the training sample needed to achieve sufficiently small misclassification probability is considered. The appropriate sample size is approximated using a stopping rule. The proposed procedure is asymptotically optimal. (~) 1998 Elsevier Science B.V.
Classification among groups is a crucial problem in managerial decision making. Classification techniques are used in: identifying stressed firms, classifying among consumer types, and rating of firms' bonds, etc. Neural networks are recognized as important and emerging methodologies in the area of
The crazy maps are a class of continuous maps from βΊ = β«ήβ¬ 1 , where βΊ is the product space of the bi-infinite sequences on N symbols and β«ήβ¬ 1 is the unit circle, into itself. Moreover, each of these maps has N orientation-preserving circle homeomorphisms associated with it. In this paper we study
We use bifurcation theory to study positive, negative, and sign-changing solutions for several classes of boundary value problems, depending on a real parameter . We show the existence of infinitely many points of pitchfork bifurcation, and study global properties of the solution curves.