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Evaluating color-based object recognition algorithms using the SOIL-47 database

机译:使用土壤-47数据库评估基于颜色的对象识别算法

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In this paper, a new image set, called the Surrey Object Image Library (SOIL-47) is introduced, on which the performance of two colour-based object recognition methods is evaluated. The data was collected specifically for testing colour-bused recognition algorithm and is publicly available. In the conducted experiments on SOIL-47, we evaluate two recognition algorithms; the Multimodal Neighbourhood Signature (MNS) approach and a method based on a Attributed Relational Graph (ARG). The MNS approach represents object appearance by measurements computed from image neighbourhoods with a multimodal colour density function. The ARG approach computes a graph of affine invariant measurements of the colour and shape of segmented image regions. Using only a single model image of each of the 47 objects, MNS performed well even for extreme test views close to ±90 degrees. The ARC method assumes a locally planar surface, therefore a second experiment was conducted on a subset of box-like objects of SOIL-47. MNS performance was fairly stable, outperforming ARG for most viewing angles.. Note, that this is the first systematic test of MNS with controlled 3D viewpoint change.
机译:本文介绍了一种新的图像集,称为Surrey对象图像库(土壤-47),在此评估两种基于颜色的对象识别方法的性能。专门收集数据,用于测试颜色总线识别算法,并公开可用。在土壤-47的进行实验中,我们评估了两个识别算法;基于归属关系图的多模式邻域签名(MNS)方法和方法(arg)。 MNS方法通过从图像邻域计算的测量表示对象外观,具有多模码颜色密度函数。 arg方法计算分段图像区域的颜色和形状的仿射不变测量图。仅使用47个对象中的每一个的单个模型图像,即使对于接近±90度的极端测试视图,MNS也表现良好。电弧方法采用局部平面表面,因此在土壤-47的盒状物体的子集上进行第二实验。 MNS性能相当稳定,表现优于arg,用于大多数观察角度..注意,这是MNS的第一次系统测试,具有受控3D视点变化。

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