Abdelkader Bellarbi, N. Zenati-Henda, Hayet Belghit, M. Hamidia, S. Benbelkacem, S. Otmane
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引用次数: 2
摘要
在本文中,我们提出了一个改进版本的MOBIL描述符[1](improved MOments based BInary differences for Local description),其中引入了两个主要贡献。一是利用几何信息进行二值检验,取代经典的强度二值检验,提高了描述步骤的精度。第二种方法是为每个测试赋予两个比特,以提高显著性水平。这种方法对仿射变换和外观变化具有很高的独特性。实验评估表明,与当前最先进的实时局部描述符相比,MOBIL在低计算复杂度和高识别率方面取得了相当好的性能。
An improved MOBIL descriptor for markerless augmented reality
In this paper, we present an improved version of MOBIL descriptor [1] (Improved MOments based BInary differences for Local description), which introduces two main contributions. The first one is the use of geometric information for the binary test instead of the classical intensity binary test, to get more precision in the description step. The second one is to attribute two bits for each test, to increase the distinctiveness level. This approach offers high distinctiveness against affine transformations and appearance changes. The experimental evaluation shows that MOBIL achieves a quite good performance in term of low computation complexity and high recognition rate compared to state-of-the-art real-time local descriptors.