基于卷积神经网络的食用菌与非食用菌鉴别

G. Devika, A. Karegowda
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引用次数: 5

摘要

蘑菇是印度最受欢迎的食物之一。在印度,人们正在种植蘑菇作为他们生计的可行收入来源。如今,深度学习被应用于处理大数据和视觉相关应用。最近的智能设备可以利用深度卷积神经网络(CNN)进行蘑菇的可食性自动诊断,它在所有研究活动领域都显示出卓越的性能能力。DCNN在静态数据集上工作。它所应用的模型也将决定它对训练的要求。提出了一种基于深度CNN的蘑菇可食性检测分类工具。通过调整超参数和池化组合来获得更好的性能,以获得适当的实时推理。用分割数据集作为训练集和测试集对DCNN进行训练。分析了sNet、Lenet、AlxNet、cNET网络体系结构的性能。DCNN的结果在性能上相对较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Edible and Non-Edible Mushroom Through Convolution Neural Network
Mushroom is one among the most popular consumed food in India. In India people are cultivating mushroom as viable income source for their livelihood. Now-a-days deep learning is being applied to process big data and vision related applications. Recent smart devices can be utilized for automated edibility diagnosis of mushroom using deep convolution neural network (CNN) it has revealed a remarkable performance capability in all its sphere of research activities. DCNN works on static dataset. The models on which it applies will pose as well determine its requirement for training. This paper presents a classification tool for edibility detection of mushroom through deep CNN. Better performance is obtained by tuning the hyper-parameters and through adjustments in pooling combinations in order to obtain real time inference suitably. DCNN has been trained with a data set of segmentation as train and test sets. Performance is analyzed on sNet, Lenet, AlxNet, cNET network architectures. DCNN results are comparatively better in its performance.
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