M. Fischer, S. Gopal, Petra Staufer-Steinnocher, K. Steinnocher
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引用次数: 32
摘要
在一个基于卫星图像的模式分类问题上,对三种神经网络分类器的分类精度进行了评价。使用的神经网络分类器包括两种类型的多层感知器(MLP)和径向基函数网络。使用常规分类器作为基准来评估神经网络分类器的性能。该卫星图像由2460像素组成,选自维也纳市及其北部地区的Landsat-5 TM场景的一部分(270 x 360)。除了评估分类精度外,还分析了神经分类器的泛化能力和结果的稳定性。采用消权的MLP-1分类器提供了最佳的总体结果(在准确性和收敛时间方面)。它有少量的参数,不需要特定于问题的初始权重值系统。对于该问题,样本内分类误差为7.87%,样本外分类误差为10.24%。四类仿真说明了分类器的总体特性和结果在控制参数、训练时间、梯度下降控制项、初始参数条件以及不同训练和测试集方面的稳定性。
Evaluation of Neural Pattern Classifiers for a Remote Sensing Application
This paper evaluates the classification accuracy of three neural network classifiers on a satellite image-based pattern classification problem. The neural network classifiers used include two types of the Multi-Layer-Perceptron (MLP) and the Radial Basis Function Network. A normal (conventional) classifier is used as a benchmark to evaluate the performance of neural network classifiers. The satellite image consists of 2,460 pixels selected from a section (270 x 360) of a Landsat-5 TM scene from the city of Vienna and its northern surroundings. In addition to evaluation of classification accuracy, the neural classifiers are analysed for generalization capability and stability of results. Best overall results (in terms of accuracy and convergence time) are provided by the MLP-1 classifier with weight elimination. It has a small number of parameters and requires no problem-specific system of initial weight values. Its in-sample classification error is 7.87% and its out-of-sample classification error is 10.24% for the problem at hand. Four classes of simulations serve to illustrate the properties of the classifier in general and the stability of the result with respect to control parameters, and on the training time, the gradient descent control term, initial parameter conditions, and different training and testing sets.