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A statistical significance of differences in classification accuracy of crop types using different classification algorithms

机译:使用不同分类算法的作物类型分类准确性差异的统计学意义

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Crop classification is needed to understand the physiological and climatic requirement of different crops. Kernel-based support vector machines, maximum likelihood and normalised difference vegetation index classification schemes are attempted to evaluate their performances towards crop classification. The linear imaging self-scanning (LISS-IV) multi-spectral sensor data was evaluated for the classification of crop types such as barley, wheat, lentil, mustard, pigeon pea, linseed, corn, pea, sugarcane and other crops and non-crop such as water, sand, built up, fallow land, sparse vegetation and dense vegetation. To determine the spectral separability among crop types, the M-statistic and Jeffries-Matusita (J-M) distance methods have been utilised. The results were statistically analysed and compared using Z-test and (2)-test. Statistical analysis showed that the accuracy results using SVMs with polynomial of degrees 5 and 6 were not significantly different and found better than the other classification algorithms.
机译:需要作物分类来了解不同作物的生理和气候要求。基于内核的支持向量机,最大可能性和归一化差异植被指数分类计划试图评估其对作物分类的性能。评估线性成像自扫描(LISS-IV)的多光谱传感器数据进行大麦,小麦,扁豆,芥菜,鸽豌豆,亚麻籽,玉米,豌豆,甘蔗等作物以及非 - 作物,如水,沙,建成,休耕地,稀疏植被和密集植被。为了确定作物类型之间的光谱分置力,已经利用了M统计和Jeffries-Matusita(J-M)距离方法。使用Z-Test和(2) - 最终进行统计分析并比较结果。统计分析表明,使用具有度量5和6多项式的SVM的精度结果没有显着不同,并且比其他分类算法更好。

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