首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >HIERARCHICAL CLASSIFICATION FOR ASSESSMENT OF HORTICULTURAL CROPS IN MIXED CROPPING PATTERN USING UAV-BORNE MULTI-SPECTRAL SENSOR
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HIERARCHICAL CLASSIFICATION FOR ASSESSMENT OF HORTICULTURAL CROPS IN MIXED CROPPING PATTERN USING UAV-BORNE MULTI-SPECTRAL SENSOR

机译:使用无人机多光谱传感器评估混合裁剪模式园艺作物的分层分类

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Assessment of horticultural crops under mixed cropping system has been a challenge, both for horticulturists and also to the remote sensing communities. But the recent developments in wide range of sensors onboard Unmanned Aerial Vehicles (UAVs) has opened up new possibilities in identification, mapping and monitoring of horticultural crops. This paper presents the results made from a pilot exercise on horticultural crop discrimination using Parrot Sequoia multi-spectral sensor onboard a UAV. This exercise was carried out in Nongkhrah village, Ri-Bhoi district of Meghalaya state located in the north eastern part of India having mixed horticultural crops. A two level hierarchical classification system was followed for identification and delineation of the major horticultural crops in the village. Parrot Sequoia multi-spectral sensor having four bands has been found to be effective in discrimination of horticultural crops based on variation in spectral response of six horticultural crops viz., pineapple, banana, orange, papaya, ginger and turmeric using three commonly used indices viz., Normalized Difference Vegetation Index (NDVI), Normalized Difference Red Edge Index (NDRE) and Green Normalized Difference Vegetation Index (GNDVI). NDVI and GNDVI showed nearly similar spectral response, whereas separability among the horticultural crops significantly improved with the use of NDRE. The first level of classification involving the five broad land cover classes has resulted an overall accuracy of about 91%, whereas the second level of classification for delineating the five selected horticultural crops has provided an overall accuracy of 79.8%.
机译:混合种植制度下的园艺作物评估是乡间园区的挑战,也是遥感社区的挑战。但是最近在无人驾驶航空公司(无人机)上的广泛传感器的发展已经开辟了园艺作物的识别,测绘和监测的新可能性。本文介绍了使用Parrot SemsoIa多光谱传感器在UAV上使用Parrot Sequoia多光谱传感器的园艺作物歧视的试验练习。该练习是在印度北东部的梅格拉亚州的梅尔亚亚州雷博利区的Nongkhrah村,位于印度的北部,园艺作物。遵循两个级别的分层分类系统,用于识别和描绘村庄的主要园艺作物。已经发现具有四个带的鹦鹉红杉的多光谱传感器基于六种园艺作物Qiz的光谱响应的变化来有效地辨别园艺作物。,使用三个常用的索引的菠萝,香蕉,橙色,木瓜,姜和姜黄。,归一化差异植被指数(NDVI),归一化差红边指数(NDRE)和绿色归一化差异植被指数(GNDVI)。 NDVI和GNDVI显示出几乎相似的光谱响应,而使用NDRE的园艺作物之间的可分离性显着改善。涉及五个广泛陆地覆盖类的第一级分类导致总体准确性约为91%,而第二级划定五种选定的园艺作物的分类级别已经提供了79.8%的整体准确性。

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