Image based flower species classification using CNN

Santosh Giri
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Abstract

Deep learning is one of the essential parts of machine learning. Applications such as image classification, text recognition, object detection etc. used deep learning architectures. In this paper neural network model was designed for image classification. A NN classifier with one fully connected layer and one softmax layer was designed and feature extraction part of inception v3 model was reused to calculate the feature value of each images. And by using these feature values the NN classifier was trained. By adopting transfer learning mechanism NN classifier was trained with 17 classes of oxford 17 flower image dataset. The system provided final training accuracy of 99 %. After training, system was evaluated with testing dataset images. The mean testing accuracy was 86.4%.
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基于CNN图像的花卉种类分类
深度学习是机器学习的重要组成部分之一。图像分类、文本识别、目标检测等应用都使用了深度学习架构。本文设计了用于图像分类的神经网络模型。设计了一个全连接层和一个softmax层的神经网络分类器,并重用inception v3模型的特征提取部分来计算每张图像的特征值。通过使用这些特征值来训练神经网络分类器。采用迁移学习机制,利用牛津17花图像数据集的17个类对神经网络分类器进行训练。该系统的最终训练准确率达到99%。训练结束后,使用测试数据集图像对系统进行评估。平均检测准确率为86.4%。
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