Li Na, Xu Zhaopeng, Zhao Huijie, Huang Xinchen, Li Zhenhong, Drummond Jane, Wang Daming
School of Instrumentation Science and Opto-Electronics Engineering, Beihang University, Beijing 100191, China.
School of Engineering, Newcastle University, Newcastle upon Tyne NE1 7RU, UK.
Sensors (Basel). 2018 Mar 5;18(3):780. doi: 10.3390/s18030780.
The diverse density (DD) algorithm was proposed to handle the problem of low classification accuracy when training samples contain interference such as mixed pixels. The DD algorithm can learn a feature vector from training bags, which comprise instances (pixels). However, the feature vector learned by the DD algorithm cannot always effectively represent one type of ground cover. To handle this problem, an instance space-based diverse density (ISBDD) model that employs a novel training strategy is proposed in this paper. In the ISBDD model, DD values of each pixel are computed instead of learning a feature vector, and as a result, the pixel can be classified according to its DD values. Airborne hyperspectral data collected by the Airborne Visible/Infrared Imaging Spectrometer (AVIRIS) sensor and the Push-broom Hyperspectral Imager (PHI) are applied to evaluate the performance of the proposed model. Results show that the overall classification accuracy of ISBDD model on the AVIRIS and PHI images is up to 97.65% and 89.02%, respectively, while the kappa coefficient is up to 0.97 and 0.88, respectively.
提出了一种多样密度(DD)算法,用于处理训练样本包含诸如混合像素等干扰时分类准确率较低的问题。DD算法能够从包含实例(像素)的训练包中学习特征向量。然而,DD算法学习到的特征向量并不总能有效地表示某一种地物覆盖类型。为解决该问题,本文提出了一种基于实例空间的多样密度(ISBDD)模型,该模型采用了一种新颖的训练策略。在ISBDD模型中,计算每个像素的DD值而非学习特征向量,因此,可以根据像素的DD值对其进行分类。利用机载可见/红外成像光谱仪(AVIRIS)传感器和推扫式高光谱成像仪(PHI)采集的机载高光谱数据对所提模型的性能进行评估。结果表明,ISBDD模型在AVIRIS和PHI图像上的总体分类准确率分别高达97.65%和89.02%,而kappa系数分别高达0.97和0.88。