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A METHOD TO ESTIMATE TEMPORAL INTERACTION IN A CONDITIONAL RANDOM FIELD BASED APPROACH FOR CROP RECOGNITION

机译:一种方法来估算基于条件随机场的作物识别方法的时间交互

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This paper presents a method to estimate the temporal interaction in a Conditional Random Field (CRF) based approach for crop recognition from multitemporal remote sensing image sequences. This approach models the phenology of different crop types as a CRF. Interaction potentials are assumed to depend only on the class labels of an image site at two consecutive epochs. In the proposed method, the estimation of temporal interaction parameters is considered as an optimization problem, whose goal is to find the transition matrix that maximizes the CRF performance, upon a set of labelled data. The objective functions underlying the optimization procedure can be formulated in terms of different accuracy metrics, such as overall and average class accuracy per crop or phenological stages. To validate the proposed approach, experiments were carried out upon a dataset consisting of 12 co-registered LANDSAT images of a region in southeast of Brazil. Pattern Search was used as the optimization algorithm. The experimental results demonstrated that the proposed method was able to substantially outperform estimates related to joint or conditional class transition probabilities, which rely on training samples.
机译:本文介绍了一种方法来估算基于条件随机场(CRF)的作物识别方法中的时间交互的方法。这种方法将不同作物类型类型的候选为CRF。假设相互作用电位仅取决于连续两个时期图像站点的类标签。在所提出的方法中,时间交互参数的估计被认为是优化问题,其目标是找到最大化CRF性能的转换矩阵,在一组标记的数据上。优化程序的目标函数可以在不同的精度度量方面配制,例如每种作物或鉴别阶段的总体和平均阶级准确性。为了验证所提出的方法,在数据集上进行了实验,该数据集由巴西东南部的12个联合登记的土地图像组成。模式搜索被用作优化算法。实验结果表明,该方法能够大致优于与关节或条件转换概率相关的估计,依赖于培训样本。

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