Abstract

BackgroundThe images of different flower species had small inter-class variations across different classes as well as large intra-class variations within a class. Flower classification techniques are mainly based on the features of color, shape and texture, however, the procedure always involves too many heuristics as well as manual labor to tweak parameters, which often leads to datasets with poor qualitative and quantitative measures. The current study proposed a deep architecture of convolutional neural network (CNN) for the purposes of improving the accuracy of identifying the white flowers of Fragaria × ananassa from other three wild flower species of Androsace umbellata (Lour.) Merr., Bidens pilosa L. and Trifolium repens L. in fields.ResultsThe explored CNN architecture consisted of eightfolds of learnable weights including 5 convolutional layers and 3 fully connected layers, which received a true color 227 × 227 pixels flower image as its input. The developed CNN detector was able to classify the instances of flowers at overall average accuracies of 99.2 and 95.0% in the training and test procedure, respectively. The state-of-the-art CNN model was compared with the classical models of the scale-invariant feature transform (SIFT) features and the pyramid histogram of orientated gradient (PHOG) features combined with the multi-class support vector machine (SVM) algorithm. The proposed model turned out to be much more accurate than the traditional models of SIFT + SVM at overall average accuracies of 82.9 and 55.6% in the training and test procedure and PHOG + SVM at overall average accuracies of 78.3 and 63.1%, respectively.ConclusionsThe proposed state-of-the-art CNN method demonstrates that artificial intelligence is capable of precise classification of the white flower images, whose accuracy is comparable to traditional algorithms. The presented algorithm can be further used for the discrimination of white wild flowers in fields.

Highlights

  • The images of different flower species had small inter-class variations across different classes as well as large intra-class variations within a class

  • The encoding of local features causes some information loss which hinders the final image classification performance. These algorithms always involve too many heuristics as well as manual labor to tweak parameters according to the domain to reach a decent level of accuracy

  • The state-of-the-art proposal methods provides a superior alternative for the precise classification of the white flowers of Fragaria × ananassa from other three wild species of Androsace umbellata (Lour.) Merr., Bidens pilosa L. and Trifolium repens L. in fields. In this investigation, we have presented a convolutional neural network (CNN) architecture for the deeply classifying four species of white flowers including Androsace umbellata (Lour.) Merr., Bidens pilosa L., Trifolium repen L. and Fragaria × ananassa

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Summary

Introduction

The images of different flower species had small inter-class variations across different classes as well as large intra-class variations within a class. A new method using multiple color SIFT features was proposed to improve the performance of flower image classification [32]. A marginalized kernel algorithm was developed by utilizing the responses of the logistic regression-based fusion model for detecting the flower images [11]. Those models have demonstrated effectiveness for image classification to a certain degree. The encoding of local features causes some information loss which hinders the final image classification performance These algorithms always involve too many heuristics as well as manual labor to tweak parameters according to the domain to reach a decent level of accuracy

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