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Data mining by decision tree for object oriented classification of the sugar cane cut kinds

机译:基于决策树的数据挖掘对甘蔗切种进行面向对象分类

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Brazil is the world''s largest sugarcane producer with almost 9 million ha of cultivated area in 2008. Great part of the harvested area is manually cut using the practice of burning the dry leaves prior to the stalk harvest. This practice cause atmospheric pollution and damage to public health, in particular, to local inhabitants. In São Paulo State an environmental protocol was signed to establish the burning practice should stop by 2017. Remote sensing satellite images are useful to discriminate different sugar cane harvest types. This study analyzed the generation of decision trees using mean and multi-attributes extracted from objects in TM/Landsat sensor images aiming the classification of types of sugar cane harvesting under different soil types. The classifications performances were between 0.69 up 0.84 kappa indexes. The classifications were sensitives to the different soils and the use of multi-attributes did not contribute to the improvement of the classifications.
机译:巴西是世界上最大的甘蔗生产国,2008年的耕地面积约为900万公顷。大部分收割面积是通过在茎秆收获前燃烧干叶的方式进行人工切割的。这种做法会造成大气污染,并损害公共健康,特别是对当地居民的健康。在圣保罗州签署了一项环境协议,规定焚烧行为应在2017年停止。遥感卫星图像可用于区分不同的甘蔗收获类型。这项研究使用从TM / Landsat传感器图像中的对象提取的均值和多属性分析了决策树的生成,旨在对不同土壤类型下甘蔗收获的类型进行分类。分类表现介于0.69至0.84 kappa指数之间。分类对不同的土壤敏感,使用多属性对分类没有改善。

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