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ترجمه آنلاین میهن دیک، خدمات ترجمه تخصصی | MihanDic


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عنوان مقاله
عنوان مقاله

Automated mapping of soybean and corn using phenology

عنوان فارسی مقاله نقشه برداری خودکار سویا و ذرت با استفاده از فنولوژی

مشخصات مقاله انگلیسی
نشریه: Elsevier Elsevier
سال انتشار

2016

عنوان مجله

ISPRS Journal of Photogrammetry and Remote Sensing

تعداد صفحات مقاله انگلیسی 14
رفرنس دارد
تعداد رفرنس 77

چکیده مقاله
چکیده

For the two of the most important agricultural commodities, soybean and corn, remote sensing plays a substantial role in delivering timely information on the crop area for economic, environmental and policy studies. Traditional long-term mapping of soybean and corn is challenging as a result of the high cost of repeated training data collection, the inconsistency in image process and interpretation, and the difficulty of handling the inter-annual variability of weather and crop progress. In this study, we developed an automated approach to map soybean and corn in the state of Paraná, Brazil for crop years 2010–2015. The core of the approach is a decision tree classifier with rules manually built based on expert interaction for repeated use. The automated approach is advantageous for its capacity of multi-year mapping with- out the need to re-train or re-calibrate the classifier. Time series MODerate-resolution Imaging Spectroradiometer (MODIS) reflectance product (MCD43A4) were employed to derive vegetation phenol- ogy to identify soybean and corn based on crop calendar. To deal with the phenological similarity between soybean and corn, the surface reflectance of the shortwave infrared band scaled to a phenolog- ical stage was used to fully separate the two crops. Results suggested that the mapped areas of soybean and corn agreed with official statistics at the municipal level. The resultant map in the crop year 2012 was evaluated using an independent reference data set, and the overall accuracy and Kappa coefficient were 87.2% and 0.804 respectively. As a result of mixed pixel effect at the 500 m resolution, classification results were biased depending on topography. In the flat, broad and highly-cropped areas, uncultivated lands were likely to be identified as soybean or corn, causing over-estimation of cropland area. By con- trast, scattered crop fields in mountainous regions with dense natural vegetation tend to be overlooked. For future mapping efforts, it has great potential to apply the automated mapping algorithm to other image series at various scales especially high-resolution images.

کلمات کلیدی
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ارسال شده در تاریخ 1398/11/27


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