Object detection from satellite imagery
This report is about explaining how to apply the Faster R-CNN network structure on Object detection from satellite imagery. It explains different parts, including preparation, implementation, experiment results, and conclusion, and the purpose is trying to find out the best model for object detectio...
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sg-ntu-dr.10356-1384892020-05-06T12:14:23Z Object detection from satellite imagery Fan, Sui Lu Shijian School of Computer Science and Engineering shijian.lu@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision This report is about explaining how to apply the Faster R-CNN network structure on Object detection from satellite imagery. It explains different parts, including preparation, implementation, experiment results, and conclusion, and the purpose is trying to find out the best model for object detection. Comparing to the last “generation” CNN network, Fast R-CNN, RPN is the radically different part that implied in Faster R-CNN. It gives up the traditional selective search method but uses generated small “window”(anchor) to find the proposal region. There are lots of features that may affect the network's training and performance, like chosen convolutional neural network, learning rate, size of the dataset, and the testing dataset. The experiment and discussion part examines and discusses all the mentioned factors above in the report, and the discussion depends on the experiment results. Bachelor of Engineering (Computer Science) 2020-05-06T12:14:23Z 2020-05-06T12:14:23Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/138489 en PSCSE18-0047 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Fan, Sui Object detection from satellite imagery |
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This report is about explaining how to apply the Faster R-CNN network structure on Object detection from satellite imagery. It explains different parts, including preparation, implementation, experiment results, and conclusion, and the purpose is trying to find out the best model for object detection. Comparing to the last “generation” CNN network, Fast R-CNN, RPN is the radically different part that implied in Faster R-CNN. It gives up the traditional selective search method but uses generated small “window”(anchor) to find the proposal region. There are lots of features that may affect the network's training and performance, like chosen convolutional neural network, learning rate, size of the dataset, and the testing dataset. The experiment and discussion part examines and discusses all the mentioned factors above in the report, and the discussion depends on the experiment results. |
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Lu Shijian |
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Lu Shijian Fan, Sui |
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Final Year Project |
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Fan, Sui |
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Fan, Sui |
title |
Object detection from satellite imagery |
title_short |
Object detection from satellite imagery |
title_full |
Object detection from satellite imagery |
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Object detection from satellite imagery |
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Object detection from satellite imagery |
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object detection from satellite imagery |
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Nanyang Technological University |
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2020 |
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https://hdl.handle.net/10356/138489 |
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