شگاه صنعتي دان امیرکبیر)یک تهرانپلي تکن( انشکده د برقسي ارشد سمینار کارشنا گزارش گرایشجیتالک دی الکترونیوان عندگانه اهداف چنزمان همقاوم ردیابي م تصویر در نگارشحمودیا م نیم اس ا تی دهنما را دکتر کریم فائزمد احدیکتر سید مح دستاد ا مشاور دکتر رحمتي مهر94
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ست دست يابیم. چنی تركیبي سوالي كالسنیک در ا تر نخبت به اعمال جداگانه اي ر شهانتايجي مقا م
-برداری مونته كنارلو مني ای جديد در زمینه نمونهبر اي يافته عال هزمینه يادگیری ماشی بوده است.
بنرداری ر شهای نمونهتواند باعث ايجاد ای رفت در تحقیقات در زمینه رديابي با استفاده از تصوير شود.
زمان جختجو را به شدت كا ش د ند در نتیجنه باعنث كنا ش توانند تر ميمونته كارلوی وشمندانه
ت زمینه در تحقیقات بخنیاری در زمیننه درك تصنوير ينديو منورد اطالعاباتي شود. ایچیدگي محاس
اند تا به طور رديابي با با اي جود، تنها در سالهای اذیر اطالعات زمینه توانختهبررسي قرار گرفته است.
68ری انتقنال ای اذیر، ر شهای دگیری مانند ينادگی با جود ای رفتاستفاده از تصوير استفاده شوند.
[، اطالعات زمینه نق ي مهم در آينده تحقیقات زمینه رديابي با استفاده 131[ مدلهای گرافیكي ]130]
از تصوير ذوا د داشت.
67 Image Segmentation
68 Transfer Learning
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