In this paper we study neural network overfitting on synthetically generated and real remote sensing data. The effect of overfitting is shown by: 1) visualising the shape of the decision boundaries in feature space during the learning process, and 2) by plotting the classification accuracy of independent test sets versus the number of training cycles. A solution to the overfitting problem is proposed that involves pre-processing the training data. The method relies on obtaining an increase of spectral coherence of individual training classes by applying k-nearest neighbour filtering. Points in feature space with class labels inconsistent with those of the majority of their neighbours are removed. This effectively simplifies the training dat...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
We present an analysis of three possible strategies for exploiting the power of existing convolution...
Several energy functions for synthesizing neural networks are tested on 2-D synthetic data and on La...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
Under Consideration at Computer Vision and Image UnderstandingDeep neural networks have established ...
Overfitting is a common problem in neural networks. This report uses a simple neural network to do s...
Under Consideration at Computer Vision and Image UnderstandingInternational audienceDeep neural netw...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
The multilayer perceptron neural network has proved to be a very effective tool for the classificati...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
The understanding of generalization in machine learning is in a state of flux. This is partly due to...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
We present an analysis of three possible strategies for exploiting the power of existing convolution...
Several energy functions for synthesizing neural networks are tested on 2-D synthetic data and on La...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
Under Consideration at Computer Vision and Image UnderstandingDeep neural networks have established ...
Overfitting is a common problem in neural networks. This report uses a simple neural network to do s...
Under Consideration at Computer Vision and Image UnderstandingInternational audienceDeep neural netw...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
The multilayer perceptron neural network has proved to be a very effective tool for the classificati...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
The understanding of generalization in machine learning is in a state of flux. This is partly due to...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
We present an analysis of three possible strategies for exploiting the power of existing convolution...
Several energy functions for synthesizing neural networks are tested on 2-D synthetic data and on La...