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A Line-Context Based Object Recognition Method

机译:基于线上下文的目标识别方法

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摘要

The shape or contour of an object is usually stable and persistent, so it is a good basis for invariant recognition. For this purpose, two problems must be handled. The first is obtaining clean edges and the other is organizing those edges into a structured form so that they can be manipulated easily. We apply a bio-inspired orientation detection algorithm because it can output a fairly clean set of lines, and all lines are in the form of vectors instead of pixels. This line representation is efficient. We decompose them into several slope-depended layers and then create a hierarchical partition tree to record their geometric distribution. Based on the similarity of trees, a rough classification of objects can be realized. However, for an accuracy recognition, we design a moment-based measure to describe the detail layout of lines in a layer and then re-describe image by Hu's moment invariants. The experimental results suggest that the representation efficiency enabled by simple cell's neural mechanism and application of multi-layered representation schema can simplify the complexity of the algorithm. This proves that line-context representation greatly eases subsequent shape-oriented recognition.
机译:对象的形状或轮廓通常是稳定且持久的,因此它是不变识别的良好基础。为此,必须处理两个问题。第一个是获得干净的边缘,另一个是将这些边缘组织成结构化的形式,以便可以轻松地对其进行操作。我们应用了一种受生物启发的方向检测算法,因为它可以输出相当干净的线条集,并且所有线条都是矢量形式,而不是像素形式。这种线表示是有效的。我们将它们分解为几个与坡度有关的图层,然后创建一个分层的分区树来记录其几何分布。基于树的相似性,可以实现对象的粗略分类。但是,为了进行精度识别,我们设计了一个基于矩的度量来描述图层中线条的详细布局,然后通过Hu的矩不变性来重新描述图像。实验结果表明,简单细胞的神经机制和多层表示方案的应用提高了表示效率,可以简化算法的复杂度。这证明线上下文表示极大地简化了后续的面向形状的识别。

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