Object Recognition Using Moments: Some Experiments and Observations

M. Sarfraz
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引用次数: 7

Abstract

In many image analysis and computer vision applications, object recognition is the ultimate goal. This work presents study and experimentation for object recognition when isolated objects are under discussion. The circumstances of similarity transformations, presence of noise, and occlusion have been included as the part of the study. For simplicity, instead of objects, outline of the objects have been used for the whole process of the recognition. Hu's moments and their extended counterparts have been used as features of the objects. Various similarity measures have been used and compared for recognition. The test objects are matched with the model objects in database and the object with the least similarity measure is taken as the recognized object. A detailed experimental study has been made under different conditions and circumstances including transformation, noise, and occlusion. Databases of different sizes have been used to have a look at various experimentations. Some interesting observations have been made which may be useful for research and practicing community
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利用矩的目标识别:一些实验和观察
在许多图像分析和计算机视觉应用中,目标识别是最终目标。这项工作提出了研究和实验的对象识别时,孤立的对象进行讨论。相似变换、存在噪声和遮挡的情况已被纳入研究的一部分。为简单起见,在整个识别过程中都使用了物体的轮廓来代替物体。胡的矩和它们的延伸对应被用作物体的特征。不同的相似性度量已被用于识别和比较。将测试对象与数据库中的模型对象进行匹配,选取相似度最小的对象作为识别对象。在变换、噪声和遮挡等不同条件和环境下进行了详细的实验研究。不同大小的数据库被用来查看各种实验。一些有趣的观察可能对研究和实践社区有用
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