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首页> 外文期刊>Journal of Applied Remote Sensing >Hull vector-based incremental learning of hyperspectral remote sensing images
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Hull vector-based incremental learning of hyperspectral remote sensing images

机译:基于船体矢量的高光谱遥感图像增量学习

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摘要

To overcome the inefficiency of incremental learning for hyperspectral remote sensing images, we propose a binary detection theory-sequential minimal optimization (BDT-SMO) nonclass-incremental learning algorithm based on hull vectors and Karush-Kuhn-Tucker conditions (called HK-BDT-SMO). This method can improve the accuracy and efficiency of BDT-SMO nonclass-incremental learning for fused hyperspectral images. But HK-BDT-SMO cannot effectively solve class-incremental learning problems (an increase in the number of classes in the newly added sample sets). Therefore, an improved version of HK-BDT-SMO based on hypersphere support vector machine (called HSP-BDT-SMO) is proposed. HSP-BDT-SMO can substantially improve the accuracy, scalability, and stability of HK-BDT-SMO class-incremental learning. Ultimately, HK-BDT-SMO and HSP-BDT-SMO are applied to the classification of land uses with fused hyperspectral images, and the classification results are compared with other incremental learning algorithms to verify their performance. In nonclass-incremental learning, the accuracy of HSP-BDT-SMO and HK-BDT-SMO is approximately the same and is higher than the others, and the former has the best learning speed; while in class-incremental learning, HSP-BDT-SMO has a better accuracy and more continuous stability than the others and the second highest learning speed next to HK-BDT-SMO. Therefore, HK-BDT-SMO and HSP-BDT-SMO are excellent algorithms which are respectively suitable to nonclass and class-incremental learning for fused hyperspectral images. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:为了克服高光谱遥感图像增量学习的效率低下的问题,我们提出了一种基于船体矢量和Karush-Kuhn-Tucker条件(称为HK-BDT-S)的二元检测理论-序列最小优化(BDT-SMO)非类增量学习算法。 SMO)。该方法可以提高融合高光谱图像的BDT-SMO非类增量学习的准确性和效率。但是HK-BDT-SMO无法有效解决班级增量学习问题(新增加的样本集中班级数量的增加)。因此,提出了一种基于超球支持向量机的HK-BDT-SMO的改进版本(称为HSP-BDT-SMO)。 HSP-BDT-SMO可以大大提高HK-BDT-SMO班级增量学习的准确性,可扩展性和稳定性。最终,将HK-BDT-SMO和HSP-BDT-SMO应用于融合高光谱图像的土地利用分类,并将分类结果与其他增量学习算法进行比较,以验证其性能。在非班级增量学习中,HSP-BDT-SMO和HK-BDT-SMO的准确性大致相同,并且高于其他类别,前者的学习速度最快;在班级增量学习中,HSP-BDT-SMO比其他方法具有更高的准确性和更连续的稳定性,其学习速度仅次于HK-BDT-SMO。因此,HK-BDT-SMO和HSP-BDT-SMO是优秀的算法,分别适合于非类和类增量学习融合的高光谱图像。 (C)2015年光电仪器工程师协会(SPIE)

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