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:: دوره 14، شماره 2 - ( 9-1403 ) ::
دوره 14 شماره 2 صفحات 133-119 برگشت به فهرست نسخه ها
استخراج پوشش و کاربری اراضی بر اساس روش‌های یادگیری عمیق با استفاده از تصاویر ماهواره‌ای
پویا حیدری* ، اصغر میلان ، علیرضا قراگوزلو
چکیده:   (495 مشاهده)
به دلیل رشد جمعیت شهری، رشد شهرها و شهرنشینی، جمع آوری اطلاعات پوشش و کاربری اراضی ضروری است. کاربردهای این داده‌ها شامل حفاظت محیط زیست، برنامه‌ریزی شهری، برنامه‌ریزی زیرساخت‌های شهری و برنامه‌ریزی استراتژیک برای تضمین رشد پایدار مناطق شهری است. منبع اصلی جمع آوری داده‌های پوشش و کاربری اراضی در حال حاضر تصاویر سنجش از دور است. اطلاعات مربوط به پوشش و کاربری اراضی را می‌توان از تصاویر سنجش از دور با استفاده از تکنیک‌های طبقه‌بندی تصاویر بازیابی نمود. از نظر دقت طبقه‌بندی، تکنیک‌های یادگیری عمیق اخیراً از سایر روش‌های طبقه‌بندی پوشش و کاربری اراضی بهتر عمل کرده‌اند. شبکه‌های عصبی کانولوشنال (CNN) که در این زمینه بسیار محبوب هستند، یکی از معماری‌های مهم در طبقه‌بندی با استفاده از یادگیری عمیق هستند که اغلب در طبقه‌بندی پوشش و کاربری اراضی استفاده می‌شوند. اخیراً، یکی از تکنیک‌های شبکه عصبی کانولوشنال به نام  ResNet، در کاربردهای سنجش از دور به‌ویژه برای طبقه‌بندی پوشش و کاربری اراضی استفاده شده‌اند. مدل‌های ResNet یک انتخاب مؤثر در طبقه‌بندی پوشش و کاربری اراضی هستند زیرا می‌توانند مشکل ناپدید شدن گرادیان را مدیریت کنند. هدف اصلی این مطالعه، ارزیابی عملکرد روش‌های مقداردهی اولیه وزنی Glorot Uniform و Random Uniform در معماری‌های ResNet50، ResNet101 و ResNet152 برای استخراج پوشش و کاربری اراضی مجموعه داده EuroSat است. برای ارزیابی دقت نتایج ازF1-Score وزندار، شاخص‌های IoU، دقت کلی و ضریب کاپا استفاده شد. مقادیر متناظر ResNet101 برای این شاخص‌ها به ترتیب برابر 0.8869، 0.7951، 0.8871 و 0.8743 بودند. این نتایج نشان می‌دهد که از نظر دقت طبقه‌بندی، ResNet101 از روش‌های ResNet50 و ResNet152  عملکرد بهتری داشته‌است.

 
شماره‌ی مقاله: 8
واژه‌های کلیدی: کاربری اراضی، توسعه پایدار، یادگیری عمیق، شبکه‌های عصبی کانولوشن، شاخص ضریب کاپا
متن کامل [PDF 1304 kb]   (294 دریافت)    
نوع مطالعه: پژوهشي | موضوع مقاله: فتوگرامتری و سنجش از دور
دریافت: 1402/9/29
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Heidari P, Milan A, Gharagozlou A. Land Cover and Land Use Extraction Based on Deep Learning Methods Using Satellite Images. JGST 2024; 14 (2) : 8
URL: http://jgst.issgeac.ir/article-1-1169-fa.html

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دوره 14، شماره 2 - ( 9-1403 ) برگشت به فهرست نسخه ها
نشریه علمی علوم و فنون نقشه برداری Journal of Geomatics Science and Technology