Aggregating pixel-level prediction and cluster-level texton occurrence within superpixel voting for roadside vegetation classification

Ligang Zhang, B. Verma, David R. B. Stockwell, Sujan Chowdhury
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引用次数: 1

Abstract

Roadside vegetation classification has recently attracted increasing attention, due to its significance in applications such as vegetation growth management and fire hazard identification. Existing studies primarily focus on learning visible feature based classifiers or invisible feature based thresholds, which often suffer from a generalization problem to new data. This paper proposes an approach that aggregates pixel-level supervised classification and cluster-level texton occurrence within a voting strategy over superpixels for vegetation classification, which takes into account both generic features in the training data and local characteristics in the testing data. Class-specific artificial neural networks are trained to predict class probabilities for all pixels, while a texton based adaptive K-means clustering process is introduced to group pixels into clusters and obtain texton occurrence. The pixel-level class probabilities and cluster-level texton occurrence are further integrated in superpixel-level voting to assign each superpixel to a class category. The proposed approach outperforms previous approaches on a roadside image dataset collected by the Department of Transport and Main Roads, Queensland, Australia, and achieves state-of-the-art performance using low-resolution images from the Croatia roadside grass dataset.
在超像素投票中聚合像素级预测和聚类级文本发生用于路边植被分类
路边植被分类在植被生长管理和火灾隐患识别等方面具有重要的应用价值,近年来越来越受到人们的关注。现有的研究主要集中在学习基于可见特征的分类器或基于不可见特征的阈值,这往往存在对新数据的泛化问题。本文提出了一种将像素级监督分类和聚类级文本发生在超像素投票策略中进行植被分类的方法,该方法同时考虑了训练数据中的一般特征和测试数据中的局部特征。训练特定类别的人工神经网络来预测所有像素的类别概率,同时引入基于文本的自适应K-means聚类过程将像素分组并获得文本发生的概率。在超像素级投票中,进一步将像素级的类概率和集群级的文本发生概率结合起来,将每个超像素分配给一个类类别。该方法在澳大利亚昆士兰州交通和主要道路部收集的路边图像数据集上优于先前的方法,并在克罗地亚路边草地数据集的低分辨率图像上实现了最先进的性能。
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