Forest Species Recognition Based on Ensembles of Classifiers

J. Martins, Luiz Oliveira, R. Sabourin, A. Britto
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引用次数: 2

Abstract

Recognition of forest species is a very challenging task thanks to the great intra-class variability. To cope with such a variability, we propose a multiple classifier system based on a two-level classification strategy and microscopic images. By using a divide-and-conquer approach, an image is first divided into several sub-images which are classified independently by each classifier. In a first fusion level, partial decisions for the sub-images are combined to generate a new partial decision for the original image. Then, the second fusion level combines all these new partial decisions to produce the final classification of the original image. To generate the pool of diverse classifiers, we used classical texture-based features as well as keypoint-based features. A series of experiments shows that the proposed strategy achieves compelling results. Compared to the best single classifier, a Support Vector Machine (SVM) trained with a keypoint based feature set, the divide-and-conquer strategy improves the recognition rate in about 4 and 6 percentage points in the first and second fusion levels, respectively. The best recognition rate achieved by this proposed method is 98.47%.
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基于分类器集合的森林物种识别
森林物种的识别是一项非常具有挑战性的任务,因为它们具有很大的类内变异性。为了应对这种可变性,我们提出了一个基于两级分类策略和微观图像的多分类器系统。采用分而治之的方法,首先将图像分成若干个子图像,每个子图像由每个分类器独立分类。在第一级融合中,对子图像的部分决策进行组合,生成一个新的原始图像的部分决策。然后,第二级融合将所有这些新的部分决策结合起来,产生原始图像的最终分类。为了生成不同分类器池,我们使用了经典的基于纹理的特征和基于关键点的特征。一系列实验表明,该策略取得了令人信服的效果。与基于关键点特征集训练的最佳单分类器支持向量机(SVM)相比,分而治之策略在第一级和第二级融合水平上分别提高了约4和6个百分点的识别率。该方法的最佳识别率为98.47%。
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