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排序方式: 共有89条查询结果,搜索用时 31 毫秒
21.
基于Hopfield神经网络模型的遥感影像分类算法 总被引:1,自引:0,他引:1
针对遥感影像的分类特点,提出了一种基于Hopfield神经网络模型的遥感影像分娄算法。首先阐述了Hopfield神经网络的结构及其工怍原理,分析了Hopfield神经网络优化规则;然后在Hopfield神经网络通用模型基础上,实现了Hopfield神经网络的算法。实验结果表明,这种分类器具有较高的精度与效率,分类结果优于最大似然分类法。 相似文献
22.
Rockbust is a violent expulsion of rock due to the extreme release of strain energy stored in surrounding rock mass, leading to considerable damages to underground strucures and equipment, and threatening workers' safety. As the operational depth of engineering projects increases, a larger number of factors influence the mechanism of rockburst. Therefore, accurate classification of rockburst intensity cannot be achieved based on conventional criteria. It is urgent to develop new models with high accuracy and ease to implement in practice. This study proposed an ensemble machine learning method by aggregating seven individual classifiers including back propagation neural network, support vector machine, decision tree, k-nearest neighbours, logistic regression, multiple linear regression and Naïve Bayes. In addition, we proposed nine data imputation methods to replace the missing values in the compiled database including 188 rockburst instances. Five-fold cross validation and the beetle antennae search algorithm are used to tune hyperparameters and voting weights of the individual classifiers. The results show that the rockburst classification accuracy obtained by the classifier ensemble has increased by 15.4% compared with the best individual classifier on the test set. The predictor importance obtained by the classifier ensemble shows that the elastic energy index is the most sensitive input variable for rockburst intensity classification. This robust ensemble method can be extended to solve other classification problems in underground engineering projects. 相似文献
23.
多分类器决策融合方法在提高遥感影像分类的准确性和可靠性方面已表现出了巨大潜力,但这一过程中对所有像元多次分类会产生巨大的时间代价,为改善这一问题,本文提出了主分类器的概念。在青海湟水流域确定2个试验区,对7种常用的分类器进行评估,排除精度较低的3种分类器后,选择支持向量机(Support Vector Machine, SVM)、多层感知机(Multilayer Perceptron, MLP)、随机森林(Random Forest, RF)和梯度提升树(Gradient Boosting Decision Tree, GBDT)4种不同的分类器,建立决策规则共同对SPOT-6影像分类。为提高分类效率,以精度最高的GBDT作为主分类器对影像分类后,仅对结果中可信度不高的像元使用多分类器共同决策。研究结果表明,2个区域内主分类器独立完成分类的像元分别占38.10%和65.26%,错分率为1.57%和2.18%;多分类器共同决策的区域,相比GBDT的分类结果,总体精度分别高出2.49%和3.66%。整体上看,决策融合使2个区域的总体分类精度分别提高了1.18%和1.09%,能够有效减少分类结果中的“椒盐噪声”,精度更加均衡。相比现有的决策融合方法,主分类器的使用在保证分类精度的同时有利于分类效率的提高及分类结果保持良好的一致性。 相似文献
24.
该文基于高分卫星资料,通过基于规则的面向对象分类、基于最邻近法的监督分类及基于CART分类器的监督分类三种不同分类方法,对复杂山区光伏电站进行提取,对比三种分类提取方法结果并完成精度验证。结果表明,合理的分割参数有利于提高光伏电站提取精度;基于规则的面向对象分类法光伏电站提取精度最佳,最邻近分类法次之,CART分类器分类法最差,可利用基于规则的面向对象分类法较为准确地进行复杂山区光伏电站信息提取,为光伏产业健康、合理发展提供一定的数据支撑。 相似文献
25.
为提高驾驶疲劳检测的准确率和可靠性,利用唇色和肤色的色度分布差异,挑选3个典型颜色特征构建Fisher分类器用于提取唇色区域.采用区域连通算法对二值唇色区域进行滤波处理,运用改进积分投影算法确定嘴唇边界,根据嘴巴开合度及打呵欠频率判断驾驶员是否疲劳.实验结果表明:基于3个颜色特征构建的Fisher分类器在唇色提取效果上明显优于单一颜色特征的提取效果;改进的积分投影算法能提高嘴唇边界定位的精度和速度;基于打呵欠频率的驾驶疲劳检测方法具有更优的检测准确率和可靠性.融合多个典型颜色特征可改善唇色提取的鲁棒性和可靠性,有助于驾驶疲劳检测效果的提高. 相似文献
26.
Remote sensing techniques offer effective means for mapping plant communities. However, mapping grassland with fine vegetative classes over large areas has been challenging for either the coarse resolutions of remotely sensed images or the high costs of acquiring images with high-resolutions. An improved hybrid-fuzzy-classifier (HFC) derived from a semi-ellipsoid-model (SEM) is developed in this paper to achieve higher accuracy for classifying grasslands with Landsat images. The Xilin River Basin, Inner Mongolia, China, is chosen as the study area, because an acceptable volume of ground truthing data was previously collected by multiple research communities. The accuracy assessment is based on the comparison of the classification outcomes from four types of image sets: (1) Landsat ETM+ August 14, 2004, (2) Landsat TM August 12, 2009, (3) the fused images of ETM+ with CBERS, and (4) TM with CBERS, respectively, and by three classifiers, the proposed HFC-SEM, the tetragonal pyramid model (TPM) based HFC, and the support vector machine method. In all twelve classification experiments, the HFC-SEM classifier had the best overall accuracy statistics. This finding indicates that the medium resolution Landsat images can be used to map grassland vegetation with good vegetative detail when the proper classifier is applied. 相似文献
27.
Mapping dominant vegetation communities is important work for vegetation scientists. It is very difficult to map dominant vegetation communities using multispectral remote sensing data only, especially in mountain areas. However plant community data contain useful information about the relationships between plant communities and their environment. In this paper, plant community data are linked with remote sensing to map vegetation communities. The Bayesian soft classifier was used to produce posterior probability images for each class. These images were used to calculate the prior probabilities. One hundred and eighty plant plots at Meili Snow Mountain, Yunnan Province, China were used to characterize the vegetation distribution for each class along altitude gradients. Then, the frequencies were used to modify the prior probabilities of each class. After stratification in a vegetation part and a non-vegetation part, a maximum-likelihood classification with equal prior probabilities was conducted, yielding an overall accuracy of 82.1% and a kappa accuracy of 0.797. Maximum-likelihood classification with modified prior probabilities in the vegetation part, conducted with a conventional maximum-likelihood classification for the non-vegetation part, yielded an overall accuracy of 87.7%, and a kappa accuracy of 0.861. 相似文献
28.
29.
A catastrophic earthquake with a Richter magnitude of 7.3 occurred in the Chi-Chi area of Nantou County on 21 September 1999.
Large-scale landslides were generated in the Chiufenershan area of Nantou County in central Taiwan. This study used a neural
network-based classifier and the proposed NDVI-based quantitative index coupled with multitemporal SPOT images and digital
elevation models (DEMs) for the assessment of long-term landscape changes and vegetation recovery conditions at the sites
of these landslides. The analyzed results indicate that high accuracy of landslide mapping can be extracted using a neural
network-based classifier, and the areas affected by these landslides have gradually been restored from 211.52 ha on 27 September
1999 to 113.71 ha on 11 March 2006, a reduction of 46.24%, after six and a half years of assessment. In accordance with topographic
analysis at the sites of the landslides, the collapsed and deposited areas of the landslide were 100.54 and 110.98 ha, with
corresponding debris volumes of 31,983,800 and 39,339,500 m3. Under natural vegetation succession, average vegetation recovery rate at the sites of the landslides reached 36.68% on 11
March 2006. The vegetation recovery conditions at the collapsed area (29.17%) are shown to be worse than at the deposited
area (57.13%) due to topsoil removal and the steep slope, which can be verified based on the field survey. From 1999 to 2006,
even though the landslide areas frequently suffered from the interference of typhoon strikes, the vegetation succession process
at the sites of the landslides was still ongoing, which indicates that nature, itself, has the capability for strong vegetation
recovery for the denudation sites. The analyzed results provide very useful information for decision-making and policy-planning
in the landslide area. 相似文献
30.