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Air-Ground Vehicle Detection with a Reduced Object Category Specific Visual Dictionary

机译:空地车辆检测用缩小的对象类别特定的视觉词典

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Nowadays ground vehicle detection on airborne platforms is becoming very important for intelligent visual surveillance applications. Object detection using cascade structured classifiers is booming fast in recent decade, and very successful in real-time applications. However, most of them apply a sliding window on multi-scaled images which commonly need heavy computational expense, therefore, are only suitable for using simple features. In this paper, a biologically inspired object detection algorithm is proposed, which exploits image patch based feature learning and visual saliency detection. The image patch based local features are learnt by unsupervised learning to generate an object category specific visual dictionary. Visual saliency detection is performed to extract candidate object regions from a whole image using the learnt local features. Instead of a sliding window, a candidate object region is sent to an object classifier only when its features are salient on the whole image. Since the number of candidate object regions decreases dramatically, it allows to utilize much complex features to represent object images so that it can increase the descriptive capability of the learnt features. The experimental results on practical vehicle image datasets indicate that less computational expense and good detection performance can be achieved.
机译:如今,在机载平台上的地面车辆检测对于智能视觉监控应用变得非常重要。使用级联结构分类器的对象检测近十年来迅速蓬勃发展,并且在实时应用中非常成功。但是,它们中的大多数在多缩放图像上应用滑动窗口,这通常需要重量计算费用,因此仅适用于使用简单的功能。本文提出了一种生物学启发的对象检测算法,其利用基于图像贴片的特征学习和视力检测。通过无监督学习来学习基于图像补丁的本地特征来生成对象类别特定的视觉词典。执行视觉显着性检测以使用学习的本地特征从整个图像中提取候选对象区域。代替滑动窗口,候选对象区域仅在其特征在整个图像上突出时发送到对象分类器。由于候选对象区域的数量急剧地减小,因此它允许利用大量复杂的特征来表示对象图像,以便它可以增加学习特征的描述性能力。实际车辆图像数据集的实验结果表明可以实现计算费用较少和良好的检测性能。

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