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Aircraft Segmentation Based On Deep Learning framework : from extreme points to remote sensing image segmentation

机译:基于深度学习框架的飞机分割:从极端点到遥感图像分割

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Remote sensing image segmentation is a very important technology. Although the segmentation method based on convolutional neural networks (CNNs) has achieved promising results in natural image test set, e.g. VOC or COCO, they provide inferior performance when being transferred to remote sensing images. Due to the limits of labeled remote sensing images, finetuning pre-trained CNNs using remote sensing images do not benefit the image segmentation performance. Inspired by the recent works of interactive segmentation methods which exploit several extreme clicks that are fed into CNNs to improve the accuracy of the segmentation, we propose an effective method to improve the segmentation accuracy, which uses four extreme points (the top, bottom, left, and right) as the guide information. In terms of mIoU, our method achieves 84.4% on remote sensing image dataset, which outperforms the previous work by 23.1%. Compared with the previous interactive segmentation methods, the proposed method achieves superior performance. In addition, an improved method with an extra point is proposed based on the inaccurate part of results obtained by four extreme points. It is very feasible to be applied in an interactive segmentation toolbox.
机译:遥感图像分割是一项非常重要的技术。尽管基于卷积神经网络(CNN)的分割方法在自然图像测试集中(例如VOC或COCO,它们在传输到遥感影像时性能较差。由于标记的遥感图像的局限性,使用遥感图像对预训练的CNN进行微调不会使图像分割性能受益。受交互式分段方法最近工作的启发,该方法利用馈入CNN的多个极端点击来提高分段精度,我们提出了一种有效的方法来提高分段精度,该方法使用四个极端点(顶部,底部,左侧)和右)作为指导信息。在mIoU方面,我们的方法在遥感图像数据集上达到了84.4%,比之前的工作要高出23.1%。与以前的交互式分割方法相比,该方法具有更好的性能。此外,基于四个极端点获得的结果的不准确部分,提出了一种带有加分点的改进方法。将其应用于交互式细分工具箱中是非常可行的。

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