2022
DOI: 10.21203/rs.3.rs-2088221/v1
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Airplane Detection Based on Unsupervised Deep Domain Adaptation in Remote Sensing Images

Abstract: In this work, we use the detection and localization capabilities of the pre-trained Faster Region Convolutional Neuronal Network (Faster R-CNN) model including Resnet50 as the backbone of the architecture. Our model has been trained with a huge benchmark dataset Common Objects in Context (MSCOCO) as a source domain. The model pre-trained is used in Unsupervised Deep Domain adaptation (UDDA) for airplane detection and localization in Remote Sensing Image (RSI) as a domain target. We evaluate our proposed approa… Show more

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