Complex Texture Features Learned by Applying Randomized Neural Network on Graphs

Kallil M. C. Zielinski, L. C. Ribas, Leonardo F. S. Scabini, O. Bruno
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Abstract

Since the 1960s, texture has become one of the most-studied visual attribute of images for analysis and classification tasks. Among many different approaches such as statistical, spectral, structural and model-based, there are also methods that rely on analyzing the image complexity and learning techniques. These recent approaches are receiving attention for its promising results in the past few years. This paper proposes a method that combines complex networks and randomized neural networks. In the proposed approach, the texture image is modeled as a complex network, and the information measures obtained from the topological properties of the network are then used to train the RNN in order to learn a representation of the modeled image. Our proposal has proven to perform well in comparison to other literature approaches in two different texture databases. Our method also achieved a high performance in a very challenging biological problem of plant species recognition. Thus, the method is a promising option for different tasks of image analysis.
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基于随机神经网络的复杂纹理特征学习
自20世纪60年代以来,纹理已成为研究最多的图像视觉属性之一,用于分析和分类任务。在统计、光谱、结构和基于模型的方法中,也有依赖于分析图像复杂性和学习技术的方法。这些最近的方法在过去几年中因其令人鼓舞的结果而受到关注。本文提出了一种将复杂网络与随机神经网络相结合的方法。在该方法中,将纹理图像建模为一个复杂网络,然后使用从网络拓扑属性中获得的信息度量来训练RNN,以学习建模图像的表示。在两个不同的纹理数据库中,与其他文献方法相比,我们的建议已经被证明表现良好。我们的方法在植物物种识别这一极具挑战性的生物学问题上也取得了很高的性能。因此,该方法对于不同的图像分析任务是一个很有前途的选择。
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