National Inventory of Rabi Pulses in India Using Remotely Sensed Data

被引:0
|
作者
Nita Bhagia
G. D. Bairagi
Sandeep Pandagre
Gajendra Patel
S. P. Vyas
G. N. Naveen Kumar
Indal Ramteke
Pritam Mesharam
机构
[1] Space Applications Centre,
[2] Madhya Pradesh Remote Sensing Applications Centre,undefined
[3] Karnataka State Remote Sensing Applications Centre,undefined
[4] Maharashtra Remote Sensing Applications Centre,undefined
关键词
Food security; Pulses; AWiFS; NDVI; Spectral-temporal;
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中图分类号
学科分类号
摘要
A scheme called National Food Security Mission was launched by Government of India in 2007 for wheat, rice and pulses crops. At the request of Ministry of Agriculture for monitoring intensification of pulses a project called Pulses Intensification was taken up in Rabi season 2012–2013. Reliable statistics using advanced methods is very important for variety of pulse crops. Remotely sensed data can help in pre-harvest area estimation of pulse crops. Pulses in India are grown as partly scattered and partly contiguous crop. Growth in scattered areas and poor vegetation canopy of some of the pulse crops poses a challenge in its identification and discrimination using remotely sensed data. National Inventory of Rabi pulse crops in major growing regions of northern and southern parts of India was attempted. Multi-date AWiFS data and multi-date NDVI products of AWiFS of Rabi season 2014–2015 were used to study spectral-temporal behavior of pulse crops. Pulse crops accuracies of more than 95 % was observed in contiguous areas and 50–80.77 % in scattered regions. All India area estimate of Rabi pulses for the year 2014–2015 was 8963.327 ‘000 ha.
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页码:285 / 295
页数:10
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