Many assumptions are typically made in the course of a supervised digital image classification. The focus of this paper is the commonly made assumption of an exhaustively defined set of classes. This assumption is often unsatisfied, with the imagery containing regions of classes that were not included in training the classification. The failure to satisfy the assumed condition was investigated with reference to hard and soft land cover classifications by a feedforward neural network. The accuracy of these classifications was decreased if a non-exhaustively defined set of classes was used. The exclusion of a class from the training stage resulted in a decrease in the accuracy of a hard classification of agricultural crops of up to 21.2%. Mor...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
ABSTRACT: In recent years, the remote-sensing community has became very interested in applying neura...
Powerful classifiers as neural networks have long been used to recognise images; these images might ...
Freedom from assumptions about the data set used is one attraction of neural network classifiers. Ho...
The absence of assumptions about the dataset to be classified is one of the major attractions of neu...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...
The use of artificial neural networks for the classification of remotely sensed imagery offers sever...
Soft classification techniques have been developed to estimate the class composition of image pixels...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
Although soft classification analyses can reduce problems such as those associated with mixed pixels...
Classifiers, which are used to recognize patterns in remotely sensing images, have complementary cap...
Scene recognition is an essential component of both machine and biological vision. Recent advances i...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
ABSTRACT: In recent years, the remote-sensing community has became very interested in applying neura...
Powerful classifiers as neural networks have long been used to recognise images; these images might ...
Freedom from assumptions about the data set used is one attraction of neural network classifiers. Ho...
The absence of assumptions about the dataset to be classified is one of the major attractions of neu...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...
The use of artificial neural networks for the classification of remotely sensed imagery offers sever...
Soft classification techniques have been developed to estimate the class composition of image pixels...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
Although soft classification analyses can reduce problems such as those associated with mixed pixels...
Classifiers, which are used to recognize patterns in remotely sensing images, have complementary cap...
Scene recognition is an essential component of both machine and biological vision. Recent advances i...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
ABSTRACT: In recent years, the remote-sensing community has became very interested in applying neura...
Powerful classifiers as neural networks have long been used to recognise images; these images might ...