基于分数的植物多器官图像识别融合方案

Nguyen Thanh Nhan, Do Thanh Binh, Nguyen Hoang, Vu Hai, Tran Thi Thanh Hai, L. Lan
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引用次数: 3

摘要

本文介绍了从不同植物器官图像中实现高精度物种识别的几种融合技术。给定一系列不同的图像器官,如树枝、整枝、花或叶,我们首先使用深度卷积神经网络提取每个单一器官的置信度分数。然后,部署了各种后期融合方法,包括传统的基于转换的方法(总和规则、最大规则、乘积规则)、基于分类的方法(支持向量机)和我们提出的混合融合模型来确定感兴趣植物的身份。对于单个器官的识别,提出了两种方案。第一种方案为每个器官使用一个卷积神经网络(CNN),而第二种方案为所有器官训练一个CNN。本文选择了两个著名的cnn (AlexNet和Resnet)。我们在从两个主要资源:PlantCLEF 2015数据集和互联网资源中收集的50个物种的大量图像中评估了所提出方法的性能。与单个器官的融合相比,实验显示了融合技术的优势结果。在rank-1时,花图像对单个器官的物种识别准确率最高为75.6%,而应用叶花融合技术对单个器官的物种识别准确率可达92.6%。我们还将融合策略与多列深度卷积神经网络(MCDCNN)进行了比较[1]。所提出的混合融合方案在所有组合中都优于MCDCNN。与MCDCNN方法相比,该方法在rank-1上的改进幅度为+ 3.0% ~ + 13.8%。评估数据集以及源代码都是公开的。关键词:植物识别,卷积神经网络,深度学习,融合
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Score-based Fusion Schemes for Plant Identification from Multi-organ Images
This paper describes some fusion techniques for achieving high accuracy species identification from images of different plant organs. Given a series of different image organs such as branch, entire, flower, or leaf, we firstly extract confidence scores for each single organ using a deep convolutional neural network. Then, various late fusion approaches including conventional transformation-based approaches (sum rule, max rule, product rule), a classification-based approach (support vector machine), and our proposed hybrid fusion model are deployed to determine the identity of the plant of interest. For single organ identification, two schemes are proposed. The first scheme uses one Convolutional neural network (CNN) for each organ while the second one trains one CNN for all organs. Two famous CNNs (AlexNet and Resnet) are chosen in this paper. We evaluate the performances of the proposed method in a large number of images of 50 species which are collected from two primary resources: PlantCLEF 2015 dataset and Internet resources. The experiment exhibits the dominant results of the fusion techniques compared with those of individual organs. At rank-1, the highest species identification accuracy of a single organ is 75.6% for flower images, whereas by applying fusion technique for leaf and flower, the accuracy reaches to 92.6%. We also compare the fusion strategies with the multi-column deep convolutional neural networks (MCDCNN) [1]. The proposed hybrid fusion scheme outperforms MCDCNN in all combinations. It obtains from + 3.0% to + 13.8% improvement in rank-1 over MCDCNN method. The evaluation datasets as well as the source codes are publicly available. Keywords: Plant identification, Convolutional neural network, Deep learning, Fusion.  
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