通过显著性种子和轮廓段有效地对象化

Rigen Te, Cheng Yan
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引用次数: 0

摘要

目标建议是一种提高目标检测效率的新范式。提出了一种基于显著性种子和轮廓段的高效目标推荐方法。采用一种简单的显著性方法,在图像中获取若干显著性种子,针对图像中可能出现的所有目标,大致不考虑背景区域。然后,我们进一步使用边界盒策略对每个显著种子进行评分。如果边界框中包含的种子轮廓段越多,则认为其为目标建议的强度越高。为了提高分割效率,我们利用相邻分割对(PAS)作为轮廓分割特征,该特征易于检测,能够简洁地描述轮廓的位置和尺度。获得建议区域后,这些PAS特征也用于分类任务。实验表明,该方法是非常有效的。该方法不仅取得了与现有方法相当的结果,而且效率更高,同时也为后续的分类步骤提供了辅助信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient objectness via saliency seeds and contour segments
Object proposal is a new paradigm for improving efficiency for object detection. We propose an efficient method for object proposals by saliency seeds and contour segments. A simple saliency method is used to get several salient seeds in the image to target all the probable objects appeared in image, roughly leaving background regions out of consideration. Then we further score each of the salient seeds by using a bounding box strategy. If the bounding box contains more contour segments of the seed, it is assumed to be the object proposal more strongly. For efficiency, we utilize Pair of Adjacent Segments (PAS) as the contour segment feature, which is easy to detect and can describe the location and scale of contours compactly. After getting the proposal regions, those PAS features are also used for classification task. Experiments show that the proposed method is very effective. It has achieved comparable result to state of the art methods with higher efficiency and also provide auxiliary information to later classification step.
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