一种有效的深度学习方法用于巴拿马病的真实生活图像识别

Cheng-Fa Tsai, Yu-Chieh Chen, Chia-En Tsai
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引用次数: 1

摘要

随着信息技术的飞速发展,面向众多应用的深度学习是当前较为流行和热门的研究课题。深度学习作为当前最杰出的机器学习方法之一,在图像分析、语音识别和文本理解等众多应用中取得了巨大的成功。它使用监督和无监督策略来学习分层结构中的多级表示和特征,以完成分类和图像识别任务。本研究关注的是巴拿马(香蕉)病的真实生活图像识别,优化了深度学习技术的性能。本研究基于一种名为MResNet (modified ResNet)的深度学习技术,通过修改激活函数来提高正确率、精密度和召回率。实验结果表明,该方法对巴拿马病的检测是相当有效的。
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Real Life Image Recognition of Panama Disease by an Effective Deep Learning Approach
Because of the rapid development of information technology, the deep learning for numerous applications is a fairly popular and hot research issue currently. Deep learning, as one of the most currently extraordinary machine learning methods, has obtained substantial success in considerable applications such as image analysis, speech recognition and text understanding. It uses supervised and unsupervised strategies to learn multi-level representations and features in hierarchical architectures for the tasks of classification and image recognition. This research is concerned with a real life image recognition for panama (banana) disease which optimizes the performance of deep learning techniques. This study is based on a deep learning technique called MResNet (modified ResNet) and modify activation function to enhance accuracy, precision and recall. According to the experimental results, the proposed approach is fairly effective to detect panama disease.
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