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Adaptive Batch Mode Active Learning Technique Using an Improved Time Adaptive Support Vector Machine for Classification of Remote Sensed Image Applications

机译:自适应批量模式主动学习技术,使用改进的时间自适应支持向量机进行遥感图像应用的分类

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This paper concentrates on the issue of object identification and classification of the image in remote sensing applications. Batch mode active learning (BMAL) algorithms utilized to decrease computational time in training and have increased reputation to lessen human effort in dataclassification statistics requests for suggest a classifier. However, BMAL calls for more than selected samples derived from an ambiguity principle at reiteration, because such a methodology cannot judge conceivable overlap samples in information. The adaptive batch mode active learning (ABMAL)algorithms propose that attentively choose samples depends upon the data complexity stream being examined and the labeling cost for every data unlabeled sample. Support vector machines (SVM) utilized to classifying the image. Though, the standard Support vector machine active learning (SVM-AL)has major principle disadvantages while utilized for significance feedback. Initially, SVM frequently endures from learning with a less no. of labeled examples. Second, SVM-AL generally does not consider the repetition among examples, and so choose various examples within significance responsethat are parallel to other. The fundamental idea of Improved Time Adaptive Support Vector Machine (ITA-SVM) is to comprehend the sequence of sub-classifiers and as well as tradeoff between most local selectivity and most global selectivity. It resolves all the sub-classifiers in the meantimeby utilizing a pairing term that obliges the local SVM sub-classifiers to be like the neighbors.
机译:本文专注于遥感应用中图像对象识别和分类问题。用于减少培训计算时间的批处理模式主动学习(BMAL)算法,并提高声誉,以减少Dataclassification统计诊所请求的人类努力,建议分类器。然而,BMAL呼叫超过从重新审视的歧义原理导出的选定样本,因为这样的方法无法在信息中判断可想象的重叠样本。自适应批处理模式主动学习(ABMAL)算法提出,术后选择样本取决于所检查的数据复杂性流以及每个数据未标记的样本的标记成本。支持用于对图像进行分类的向量机(SVM)。虽然,标准支持向量机主动学习(SVM-AL)具有主要的主要原理缺点,同时用于重要的反馈。最初,SVM经常忍受学习,没有较少的。标记的例子。其次,SVM-AL通常不考虑实施例之间的重复,因此在显着的响应中选择各种示例,响应是平行的。改进时间自适应支持向量机(ITA-SVM)的基本思想是理解子分类器的序列以及大多数本地选择性和最全球选择性之间的权衡。它利用配对项解析所有子分类器,该配对项允许本地SVM子分类器类似于邻居。

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