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Aircraft type recognition based on convex hull features and SVM

机译:基于凸包特征和支持向量机的飞机类型识别

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摘要

Most current algorithms of aircraft type recognition are based on the binary images which are obtained by utilizing the technology of image segmentation. Thus the effect of image segmentation will influence the sequent classification to a great extent. Moreover, image segmentation in complex background remains a challenging research area. In our work, we propose a novel aircraft type recognition algorithm based on the aircrafts' convex hull features and Support Vector Machine (SVM). We first obtain the aircrafts' external contours while removing background. And then, we compute the planar convex hulls of the external contours. Based on the convex hulls, we combine the characteristics unique to the aircraft object, to introduce an extracting method of major symmetry axle and corresponding characters. Finally, we select the SVM which has high generalization capabilities and high performance in tackling small sample size in the pattern classification task to perform the classification. Experiment results show that the convex hull feature of aircraft object is approximately invariant, and can successfully eliminate the need to segment the object region from the complex background. The aircraft type recognition is efficient and feasible, and especially applicable for raw gray images.
机译:当前飞机类型识别的大多数算法都是基于通过利用图像分割技术获得的二值图像。因此,图像分割的效果将在很大程度上影响后续分类。此外,复杂背景下的图像分割仍然是一个具有挑战性的研究领域。在我们的工作中,我们提出了一种基于飞机凸包特征和支持向量机(SVM)的新型飞机类型识别算法。我们首先获得飞机的外部轮廓,同时去除背景。然后,我们计算外部轮廓的平面凸包。在凸包的基础上,结合飞机目标特有的特征,介绍了主要对称轴及相应特征的提取方法。最后,在模式分类任务中选择具有高泛化能力和高性能的SVM来处理小样本量的SVM进行分类。实验结果表明,飞机目标的凸包特征是近似不变的,可以成功地消除从复杂背景分割目标区域的需要。飞机类型识别是有效且可行的,并且尤其适用于原始灰度图像。

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