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Spatially Aware Dictionary Learning and Coding for Fossil Pollen Identification

机译:空间感知词典学习和编码,用于化石花粉识别

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We propose a robust approach for performing automatic species-level recognition of fossil pollen grains in microscopy images that exploits both global shape and local texture characteristics in a patch-based matching methodology. We introduce a novel criteria for selecting meaningful and discriminative exemplar patches. We optimize this function during training using a greedy submodular function optimization framework that gives a near-optimal solution with bounded approximation error. We use these selected exemplars as a dictionary basis and propose a spatially-aware sparse coding method to match testing images for identification while maintaining global shape correspondence. To accelerate the coding process for fast matching, we introduce a relaxed form that uses spatiallyaware soft-thresholding during coding. Finally, we carry out an experimental study that demonstrates the effectiveness and efficiency of our exemplar selection and classification mechanisms, achieving 86.13% accuracy on a difficult fine-grained species classification task distinguishing three types of fossil spruce pollen 1.
机译:我们提出了一种在显微镜图像中执行化石花粉粒自动物种级识别的可靠方法,该方法在基于补丁的匹配方法中利用了全局形状和局部纹理特征。我们介绍了一种新的标准,用于选择有意义的和具有区别性的示例补丁。我们使用贪婪的子模函数优化框架在训练过程中优化此函数,该框架给出具有有限逼近误差的近似最优解。我们使用这些选定的示例作为字典基础,并提出一种空间感知的稀疏编码方法,以匹配测试图像以进行识别,同时保持全局形状对应。为了加速快速匹配的编码过程,我们引入了一种宽松的形式,该形式在编码过程中使用了空间感知的软阈值。最后,我们进行了一项实验研究,证明了我们的示例选择和分类机制的有效性和效率,在区分三种类型的化石云杉花粉1的困难的细粒度物种分类任务中,达到了86.13%的准确性。

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