...
首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Neuroinspired Architecture for Robust Classifier Fusion of Multisensor Imagery
【24h】

Neuroinspired Architecture for Robust Classifier Fusion of Multisensor Imagery

机译:用于多传感器图像的鲁棒分类器融合的神经启发架构。

获取原文
获取原文并翻译 | 示例
           

摘要

Two new algorithms for robust and fault-tolerant classifier combination are presented. The attractor dynamics (AD) algorithm models some properties of sensory integration in the central nervous system and is based on the application of the dynamical systems for classifier fusion. The classifier masking (CM) algorithm is a nonneural version of the AD algorithm based on finding intersecting classifier intervals. Both of the proposed algorithms employ the idea of consensus among individual classifiers. The individual classifiers have been trained using resampled feature sets. They fuse the information from Advanced Synthetic Aperture Radar, Medium Resolution Imaging Spectrometer, and Advanced Along Track Scanning Radiometer Envisat satellite sensors for the improved sea ice classification. The results of our experiments show that training and combing the individual classifier outputs in a multiple classifier system significantly improve the robustness and the fault tolerance of the classification system as compared to the single classifier combining all sources of information. The robustness of the single classifier has been largely reduced in cases of single sensor failures (87.9% in normal conditions versus 64.8% and 66.1% for two artificially corrupted data sets), whereas the CM algorithm is more tolerant to the sensor and preprocessing errors (86.4% in normal conditions versus 78.9% and 73.6% for two artificially corrupted data sets). The performance of the CM algorithm is superior to those of the simple multiple classifier combination strategies based on classifier averaging and majority voting (78.9% versus 70.9% and 69.5%, respectively) because the AD and CM algorithms are able to discard the corrupted classifier outputs based on classifier agreement and, in fact, represent hybrid approaches combining the properties of classifier averaging and classifier selection methods.
机译:提出了两种用于鲁棒和容错分类器组合的新算法。吸引子动力学(AD)算法对中枢神经系统中感觉统合的某些属性进行建模,并且基于动力学系统在分类​​器融合中的应用。分类器屏蔽(CM)算法是AD算法的非神经版本,它基于找到相交的分类器间隔。两种提出的算法都采用了各个分类器之间的共识思想。各个分类器已使用重采样特征集进行了训练。他们融合了先进的合成孔径雷达,中分辨率成像光谱仪和先进的沿轨扫描辐射计Envisat卫星传感器提供的信息,以改善海冰的分类。我们的实验结果表明,与结合所有信息源的单个分类器相比,在多分类器系统中训练和组合各个分类器输出可显着提高分类系统的鲁棒性和容错能力。在单个传感器故障的情况下,单个分类器的鲁棒性已大大降低(正常情况下为87.9%,而两个人为破坏的数据集则为64.8%和66.1%),而CM算法更能容忍传感器和预处理错误(正常情况下为86.4%,而两个人为破坏的数据集为78.9%和73.6%)。 CM算法的性能优于基于分类器平均和多数表决的简单多分类器组合策略的性能(分别为78.9%和70.9%和69.5%),因为AD和CM算法能够丢弃损坏的分类器输出基于分类器协议,实际上代表了结合分类器平均属性和分类器选择方法的混合方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号