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Curvature scale-space-driven object recognition with an indexing scheme based on artificial neural networks

机译:基于人工神经网络的带索引方案的曲率空间驱动对象识别

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This paper addresses the problem of recognizing real flat objects from two-dimensional images. In particular, a new object recognition technique which performs under occlusion and geometric transformations is presented. The method has mainly been designed to handle complex objects and incorporates two main ideas. First, matching operates hierarchically, guided by a curvature scale space segmentation scheme, and takes advantage of important object features, that is, features which distinguish an object from other objects. This is different from many classical approaches which employ a rather large number of very local features. Second, the model database is built by using artificial neural networks (ANNs). This is also different from traditional approaches where classical indexing schemes, such as hashing, are utilized to organize and search the model database. Important object features are obtained in two steps: first, by segmenting the object boundary at multiple scales using its resampled curvature scale space (RCSS) and second, by concentrating at each scale separately, searching for groups of segments which distinguish an object from other objects. These groups of segments are then used to build a model database which stores associations between segments and models. The model database is implemented using a set of ANNs which provide the essential mechanism not only for establishing correct associations between groups of segments and models but also for enabling efficient searching and robust retrieval. The method has been tested using both artificial and real data illustrating good performance.
机译:本文解决了从二维图像识别真实平面物体的问题。特别地,提出了一种在遮挡和几何变换下执行的新对象识别技术。该方法主要设计用于处理复杂的对象,并包含两个主要思想。首先,匹配在曲率标度空间分割方案的指导下进行分层操作,并利用重要的对象特征,即将一个对象与其他对象区分开的特征。这不同于许多采用大量非常局部特征的经典方法。其次,使用人工神经网络(ANN)建立模型数据库。这也与传统方法不同,在传统方法中,传统的索引方案(例如哈希)被用于组织和搜索模型数据库。重要的对象特征分两个步骤获得:首先,通过使用重采样的曲率尺度空间(RCSS)在多个尺度上分割对象边界,其次,通过分别集中在每个尺度上,寻找将对象与其他对象区分开的线段组。这些段的组然后用于构建模型数据库,该数据库存储段和模型之间的关联。使用一组ANN来实现模型数据库,这些ANN不仅提供必要的机制,以在段和模型的组之间建立正确的关联,而且还提供了有效的搜索和强大的检索功能。该方法已使用人工数据和真实数据进行了测试,这些数据说明了良好的性能。

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