Persello C, Tolpekin V A, Bergado J R, de By R A
Faculty of Geo-Information Science and Earth Observation (ITC), University of Twente, the Netherlands.
Remote Sens Environ. 2019 Sep 15;231:111253. doi: 10.1016/j.rse.2019.111253.
Accurate spatial information of agricultural fields in smallholder farms is important for providing actionable information to farmers, managers, and policymakers. Very High Resolution (VHR) satellite images can capture such information. However, the automated delineation of fields in smallholder farms is a challenging task because of their small size, irregular shape and the use of mixed-cropping systems, which make their boundaries vaguely defined. Physical edges between smallholder fields are often indistinct in satellite imagery and contours need to be identified by considering the transition of the complex textural pattern between fields. In these circumstances, standard edge-detection algorithms fail to extract accurate boundaries. This article introduces a strategy to detect field boundaries using a fully convolutional network in combination with a globalisation and grouping algorithm. The convolutional network using an encoder-decoder structure is capable of learning complex spatial-contextual features from the image and accurately detects sparse field contours. A hierarchical segmentation is derived from the contours using the oriented watershed transform and by iteratively merging adjacent regions based on the average strength of their common boundary. Finally, field segments are obtained by adopting a combinatorial grouping algorithm exploiting the information of the segmentation hierarchy. An extensive experimental analysis is performed in two study areas in Nigeria and Mali using WorldView-2/3 images and comparing several state-of-the-art contour detection algorithms. The algorithms are compared based on the precision-recall accuracy assessment strategy which is tolerating small localisation errors in the detected contours. The proposed strategy shows promising results by automatically delineating field boundaries with F-scores higher than 0.7 and 0.6 on our two test areas, respectively, outperforming alternative techniques.
小农农场农田的精确空间信息对于向农民、管理者和政策制定者提供可操作的信息非常重要。超高分辨率(VHR)卫星图像可以捕捉此类信息。然而,小农农场农田的自动划定是一项具有挑战性的任务,因为它们规模小、形状不规则且采用混合作物种植系统,这使得它们的边界难以明确界定。小农农场之间的实际边界在卫星图像中往往不清晰,需要通过考虑农田之间复杂纹理模式的过渡来识别轮廓。在这种情况下,标准的边缘检测算法无法提取准确的边界。本文介绍了一种结合全球化和分组算法使用全卷积网络来检测农田边界的策略。使用编码器 - 解码器结构的卷积网络能够从图像中学习复杂的空间上下文特征,并准确检测稀疏的农田轮廓。利用定向分水岭变换并基于相邻区域公共边界的平均强度迭代合并相邻区域,从轮廓中得出层次分割。最后,通过采用利用分割层次信息的组合分组算法获得农田片段。在尼日利亚和马里的两个研究区域使用WorldView - 2/3图像进行了广泛的实验分析,并比较了几种最先进的轮廓检测算法。基于精确召回率精度评估策略对算法进行比较,该策略容忍检测到的轮廓中存在小的定位误差。所提出的策略显示出了有前景的结果,在我们的两个测试区域分别以高于0.7和0.6的F分数自动划定农田边界,优于其他技术。