A multi-temporal phenology based classification approach for Crop Monitoring in Kenya

IF 0.3 Q4 REMOTE SENSING South African Journal of Geomatics Pub Date : 2022-09-09 DOI:10.4314/sajg.v8i2.10
G. Laneve, R. Luciani, M. Jahjah
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Abstract

The SBAM (Satellite Based Agricultural Monitoring) project, funded by the Italian Space Agency aims at: developing a validated satellite imagery based method for estimating and updating the agricultural areas in the region of Central-Africa; implementing an automated process chain capable of providing periodical agricultural land cover maps of the area of interest and, possibly, an estimate of the crop yield. The project aims at filling the gap existing in the availability of high spatial resolution maps of the agricultural areas of Kenya. A high spatial resolution land cover map of Central-Eastern Africa including Kenya was compiled in the year 2000 in the framework of the Africover project using Landsat images acquired, mostly, in 1995. We investigated the use of phenological information in supporting the use of remotely sensed images for crop classification and monitoring based on Landsat 8 and, in the near future, Sentinel 2 imagery. Phenological information on crop condition was collected using time series of NDVI (Normalized Difference Vegetation Index) based on Landsat 8 images. Kenyan countryside is mainly characterized by a high number of fragmented small and medium size farmlands that dramatically increase the difficulty in classification; 30 m spatial resolution images are not enough for a proper classification of such areas. So, a pan-sharpening FIHS (Fast Intensity Hue Saturation) technique was implemented to increase image resolution from 30 m to 15 m. Ground test sites were selected, searching for agricultural vegetated areas from which phenological information was extracted. Therefore, the classification of agricultural areas is based on crop phenology, vegetation index behaviour retrieved from a time series of satellite images and on AEZ (Agro Ecological Zones) information made available by FAO (FAO, 1996) for the area of interest. This paper presents the results of the proposed classification procedure in comparison with land cover maps produced in the past years by other projects. The results refer to the Nakuru County and they were validated using field campaigns data. It showed a satisfactory overall accuracy of 92.66 % which is a significant improvement with respect to previous land cover maps.
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肯尼亚作物监测的多时相物候分类方法
由意大利航天局资助的SBAM(卫星农业监测)项目旨在:开发一种经验证的基于卫星图像的方法,用于估计和更新中非地区的农业地区;实现自动化过程链,该自动化过程链能够提供感兴趣区域的定期农业土地覆盖图,并且可能提供作物产量的估计。该项目旨在填补肯尼亚农业地区高空间分辨率地图的空白。2000年,在非洲覆盖项目的框架内,利用1995年获得的陆地卫星图像,编制了包括肯尼亚在内的中东非高空间分辨率土地覆盖图。我们根据陆地卫星8号和不久的将来的哨兵2号图像,研究了在支持使用遥感图像进行作物分类和监测方面使用酚学信息的情况。基于Landsat 8图像,利用归一化植被指数(NDVI)的时间序列收集了作物状况的表型信息。肯尼亚农村的主要特点是大量分散的中小型农田,这大大增加了分类的难度;30m的空间分辨率图像不足以对这样的区域进行适当的分类。因此,采用了泛锐化FIHS(快速强度色调饱和度)技术,将图像分辨率从30m提高到15m。选择了地面测试点,搜索农业植被区,从中提取了酚学信息。因此,农业区的分类是基于作物的酚学、从一系列卫星图像中检索到的植被指数行为以及粮农组织(粮农组织,1996年)为感兴趣地区提供的农业生态区信息。本文介绍了拟议的分类程序的结果,并与过去几年其他项目制作的土地覆盖图进行了比较。结果参考了纳库鲁县,并使用实地活动数据进行了验证。它显示出92.66%的令人满意的总体准确性,这与以前的土地覆盖图相比是一个显著的改进。
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