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Coarse-grained correspondence-based ancient Sasanian coin classification by fusion of local features and sparse representation-based classifier

机译:基于局部特征和稀疏表示的分类器融合的基于粗粒度对应关系的古代萨萨尼亚硬币分类

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摘要

Numismatics sorts out historical aspects of money. Identification and classification of coins, as a part of their duties, need years of experience. This research aims at using the knowledge of numismatics for developing an image-based classification of ancient Sassanian dynasty coins. A straightforward method is to take coins observe and reverse-side motifs into account, just like numismatics does. To this aim, three feature descriptors, Cosine transform, Wavelet transform and Bi-Directional Principal Component Analysis, are separately applied to the extracted motifs' areas to form the feature space. To cope with the 'curse of dimensionality' and increase the 'discrimination power', feature space is enriched with spatial information achieved by applying a feature selection method. Indeed, the best feature subset, which maximizes the mutual information between the joint distribution of the selected features and the classification variable, is selected using the minimum Redundancy Maximum Relevance (mRMR) method to a trade-off between thousands of features and a few hundreds of samples. One fold of our contribution dedicates to decrease the over-fitting probability of the learning model by making the Sparse Representation-based Classifier kernelized. We evaluate our method on a dataset of 573 coin images. The experimental results show that our proposed image representation is more discriminative than the competitive ones in which the system achieves a mean classification rate of 96.51 %.
机译:钱币学解决了货币的历史问题。作为硬币工作的一部分,硬币的识别和分类需要多年的经验。这项研究旨在利用钱币学知识来开发基于图像的古代萨桑王朝硬币分类。一种简单的方法就是像钱币学一样考虑硬币的观察和反面图案。为此,将三个特征描述符余弦变换,小波变换和双向主成分分析分别应用于提取的图案区域,以形成特征空间。为了应对“维数的诅咒”并增加“区分能力”,通过应用特征选择方法来获得具有丰富空间信息的特征空间。实际上,使用最小冗余最大相关性(mRMR)方法选择了最佳特征子集,该子集可以最大化所选特征的联合分布与分类变量之间的相互信息,从而在数千个特征和几百个特征之间进行权衡样本。我们的贡献的一倍致力于通过使基于稀疏表示的分类器内核化来减少学习模型的过拟合概率。我们在573个硬币图像的数据集上评估了我们的方法。实验结果表明,与该系统达到96.51%的平均分类率的竞争性图像相比,我们提出的图像表示更具判别力。

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