基于迁移模型的花卉分类

Poonam Shourie, Vatsala Anand, Sheifali Gupta
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引用次数: 0

摘要

花卉分类问题涉及识别给定花卉图像的种类。现有的花卉分类技术面临着过拟合、计算复杂、精度有限和参数调优等问题。本文提出了一种基于异常架构的深度学习模型来解决这一问题。该模型由多个异常块组成,每个异常块都有一个卷积层,然后是一个剩余连接和一系列其他操作。最终异常块的输出被馈送到一个完全连接的层,以获得最终的分类。该模型在大型花卉图像数据集上进行了训练,在测试集上取得了较高的准确率。提出的模型还进行了实验,以评估模型在不同输入分辨率和不同训练数据量等条件下的性能。结果表明,该模型在花卉分类任务上优于目前最先进的方法。它证明了99.48%的准确率和在深度学习中使用异常架构进行图像分类任务的有效性,并强调了适当的数据预处理和增强技术对于实现良好性能的重要性。
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Flower Classification using a Transfer-based Model
The flower classification problem involves identifying the species of a given flower image. There were several challenges faced by existing technologies for flower classification like overfitting, computational complexity, limited accuracy, and parameter tuning. In this research, a deep learning model based on Xception architecture is proposed to solve this problem. The proposed model consists of multiple Xception blocks, each of which has a convolutional layer followed by a residual connection and a series of other operations. The output of the final Xception block is fed into a fully connected layer to obtain the final classification. The model was trained on a large dataset of flower images and achieved high accuracy on the test set. The proposed model also conducted experiments to evaluate the performance of the model under various conditions, such as different input resolutions and different amounts of training data. The results show that the proposed model outperforms state-of-the-art methods on the flower classification task. It demonstrates the accuracy of 99.48% and the effectiveness of using the xception architecture in deep learning for image classification tasks and highlights the importance of proper data pre-processing and augmentation techniques in achieving good performance.
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