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Semi-Supervised Exemplar Learning for Object Detection in Aerial Imagery

机译:在空中图像中对象检测的半监督示例性学习

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Deep convolutional neural networks (CNNs) have proven to be successful for learning task-specific features that achieve state-of-the-art performance on many computer vision tasks. For object detection applications, the introduction of region-based CNNs (R-CNNs), and its successors, Fast R-CNN and Faster R-CNN, has produced relatively high accuracies and run-time efficient results. With Faster R-CNX. a region proposal network (RPN) is employed to share convolutional layers for both object proposals and detection with no loss in accuracy. However, these approaches are trained in a fully supervised manner, where a large number of samples for individual object classes arc required, and classes arc pre-determined by manual annotation. Large-scale supervision leads to limitations in utility for many real-world applications, including those involving difficult-to-detect, small, and sparse target objects in variable environments. Alternatively, exemplar learning is a paradigm for discovering visual similarities in an unsupervised fashion from potentially very small numbers of examples. Surrogate classes or outliers are discovered via the inherent empirical characteristics of the objects themselves. In this work, we merge the strengths of CNN structures with pre-processing steps borrowed from exemplar learning. We employ a semi-supervised approach that combines the ability to use generically-learned class-relatedness with CNN-based detectors. We train and test the approach on a set of aerial imagery generated from unmanned aircraft systems (UAS) for challenging real-world, small object detection tasks.
机译:深度卷积神经网络(CNNS)已被证明可以成功地学习特定于特定的特定功能,这些功能在许多计算机视觉任务上实现最先进的性能。对于对象检测应用,引入基于区域的CNNS(R-CNN)及其继承者,快速R-CNN和更快的R-CNN,具有相对高的精度和运行时间有效的结果。 r-cnx更快。区域提案网络(RPN)用于共享对象提案和检测的卷积层,并且没有精确损失。然而,这些方法是以完全监督的方式培训,其中需要为各个对象类的大量样本需要弧形,并且通过手动注释预先确定的类弧。大规模监督导致许多真实应用程序的效用限制,包括涉及可变环境中难以检测,小和稀疏目标对象的那些。或者,示例性学习是从潜在非常小的示例中以无监督的方式发现视觉相似度的范例。代理类或异常值是通过本身的固有的经验特征来发现的。在这项工作中,我们合并了CNN结构的优势,从示例性学习借用了预处理步骤。我们采用了一个半监督方法,该方法结合了使用基于CNN的探测器的纯粹学习的类相关性的能力。我们培训并测试从无人驾驶飞机系统(UAS)产生的一组空中图像上的方法,以满足现实世界,小对象检测任务。

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