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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >A COARSE-TO-FINE MODEL FOR AIRPLANE DETECTION FROM LARGE REMOTE SENSING IMAGES USING SALIENCY MODLE AND DEEP LEARNING
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A COARSE-TO-FINE MODEL FOR AIRPLANE DETECTION FROM LARGE REMOTE SENSING IMAGES USING SALIENCY MODLE AND DEEP LEARNING

机译:利用SALIENCY模型和深度学习从大型遥感图像识别飞机的粗到精模型

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High resolution remote sensing images are bearing the important strategic information, especially finding some time-sensitive-targets quickly, like airplanes, ships, and cars. Most of time the problem firstly we face is how to rapidly judge whether a particular target is included in a large random remote sensing image, instead of detecting them on a given image. The problem of time-sensitive-targets target finding in a huge image is a great challenge: 1) Complex background leads to high loss and false alarms in tiny object detection in a large-scale images. 2) Unlike traditional image retrieval, what we need to do is not just compare the similarity of image blocks, but quickly find specific targets in a huge image. In this paper, taking the target of airplane as an example, presents an effective method for searching aircraft targets in large scale optical remote sensing images. Firstly, we used an improved visual attention model utilizes salience detection and line segment detector to quickly locate suspected regions in a large and complicated remote sensing image. Then for each region, without region proposal method, a single neural network predicts bounding boxes and class probabilities directly from full images in one evaluation is adopted to search small airplane objects. Unlike sliding window and region proposal-based techniques, we can do entire image (region) during training and test time so it implicitly encodes contextual information about classes as well as their appearance. Experimental results show the proposed method is quickly identify airplanes in large-scale images.
机译:高分辨率遥感影像承载着重要的战略信息,尤其是迅速找到一些对时间敏感的目标,例如飞机,轮船和汽车。大多数时候,我们首先面临的问题是如何快速判断特定目标是否包含在大型随机遥感图像中,而不是在给定图像上检测到它们。在大图像中发现时间敏感目标目标的问题是一个巨大的挑战:1)复杂的背景会导致在大型图像中微小对象检测中造成高损失和错误警报。 2)与传统的图像检索不同,我们需要做的不仅是比较图像块的相似性,而且要在巨大图像中快速找到特定目标。本文以飞机目标为例,提出了一种在大规模光学遥感影像中搜索飞机目标的有效方法。首先,我们使用了一种改进的视觉注意模型,该模型利用显着性检测和线段检测器来快速定位大型复杂的遥感图像中的可疑区域。然后,对于每个区域,无需区域建议方法,就可以通过单个神经网络直接从完整图像中预测边界框和类概率,并通过一次评估来搜索小型飞机物体。与基于滑动窗口和区域提议的技术不同,我们可以在训练和测试期间完成整个图像(区域),因此它隐式编码有关类及其外观的上下文信息。实验结果表明,该方法可以快速识别飞机中的大型图像。

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