A real-time efficient object segmentation system based on U-Net using aerial drone images

2021 
Real-time object detection and segmentation are considered as one of the fundamental but challenging problems in remote sensing and surveillance applications (including satellite and aerial). Consequently, it performs a crucial role in various management and monitoring applications and has received notable attention in recent years. This paper aims to present a real-time, efficient system in which a deep learning-based model U-Net is explored for multiple object segmentation in aerial drone images. We perform data augmentation and apply transfer learning to enhance the model efficiency. We experimented U-Net segmentation model with different base architectures, including VGG 16, ResNet-50, and MobileNet, and compare their performance. We also compare the results U-Net segmentation model with different base architectures and concludes that the U-Net (MobileNet) achieves good results. The experimental results demonstrate that data augmentation improves the model’s performance by achieving a segmentation accuracy of 92%, 93%, and 95% with base architectures VGG-16, ResNet-50, and MobileNet, respectively.
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