Dirichlet process based context learning for mine detection in hyperspectral imagery

K. Morton, P. Torrione, L. Collins
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引用次数: 4

Abstract

Hyperspectral imagery (HSI) has been shown to be a powerful remote sensing phenomenology that is appropriate for a variety of classification and detection tasks. Standard detection and classification algorithms applied to hyperspectral data are hindered by environmental factors that alter the statistics of the data such as sun intensity, atmospheric conditions or soil properties. Detection and classification algorithms operating on HSI must account for the changing context underlying each observation for robust performance. This work focuses on algorithms that incorporate knowledge of underlying context for the discrimination of landmine responses from other surface or sub-surface anomalies using airborne HSI. This work compares both generative context models, that model context at a given location using features of the surrounding data, and discriminative context models that determine the context at a given location to maximize performance. Both approaches utilize a Dirichlet process prior to infer the number of contexts within the data without the need to explicitly label the context of each image or location within the image. Results indicate that Dirichlet process based generative context clustering determines contexts that are congruent with physical characteristics such as time of day, but does not necessarily lead to performance improvements. Dirichlet process based discriminative clustering, however, yields performance greater than a labeled generative approach.
基于Dirichlet过程的高光谱图像中地雷探测的上下文学习
高光谱成像(HSI)已被证明是一种强大的遥感现象学,适用于各种分类和检测任务。应用于高光谱数据的标准检测和分类算法受到环境因素的阻碍,这些因素会改变数据的统计数据,如太阳强度、大气条件或土壤性质。在HSI上操作的检测和分类算法必须考虑到每次观察的变化背景,以获得稳健的性能。这项工作的重点是算法,该算法结合了使用机载HSI区分地雷响应与其他地表或地下异常的潜在背景知识。这项工作比较了生成上下文模型(使用周围数据的特征在给定位置建模上下文)和判别上下文模型(确定给定位置的上下文以最大化性能)。这两种方法在推断数据中的上下文数量之前都使用狄利克雷过程,而不需要显式标记每个图像的上下文或图像中的位置。结果表明,基于Dirichlet过程的生成式上下文聚类确定了与物理特征(如一天中的时间)一致的上下文,但不一定会导致性能提高。然而,基于Dirichlet过程的判别聚类产生的性能优于标记生成方法。
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