Using Deep Learning Neural Network in Artificial Intelligence Technology to Classify Beef Cuts

Sunil Gc, Borhan Saidul Md, Yu Zhang, D. Reed, M. Ahsan, E. Berg, Xin Sun
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引用次数: 10

Abstract

The objective of this research was to evaluate the deep learning neural network in artificial intelligence (AI) technologies to rapidly classify seven different beef cuts (bone in rib eye steak, boneless rib eye steak, chuck steak, flank steak, New York strip, short rib, and tenderloin). Color images of beef samples were acquired from a laboratory-based computer vision system and collected from the Internet (Google Images) platforms. A total of 1,113 beef cut images were used as training, validation, and testing data subsets for this project. The model developed from the deep learning neural network algorithm was able to classify certain beef cuts (flank steak and tenderloin) up to 100% accuracy. Two pretrained convolution neutral network (CNN) models Visual Geometry Group (VGG16) and Inception ResNet V2 were used to train, validate, and test these models in classifying beef cut images. An image augmentation technique was incorporated in the convolution neutral network models for avoiding the overfitting problems, which demonstrated an improvement in the performance of the image classifier model. The VGG16 model outperformed the Inception ResNet V2 model. The VGG16 model coupled with data augmentation technique was able to achieve the highest accuracy of 98.6% on 116 test images, whereas Inception ResNet V2 accomplished a maximum accuracy of 95.7% on the same test images. Based on the performance metrics of both models, deep learning technology evidently showed a promising effort for beef cuts recognition in the meat science industry.
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利用人工智能技术中的深度学习神经网络对牛肉切块进行分类
本研究的目的是评估人工智能(AI)技术中的深度学习神经网络,以快速分类七种不同的牛肉(带骨肋眼牛排、无骨肋眼牛肉、查克牛排、侧翼牛排、纽约条、短肋排和里脊肉)。牛肉样本的彩色图像是从基于实验室的计算机视觉系统获取的,并从互联网(谷歌图像)平台收集。共有1113张牛肉切片图像被用作该项目的训练、验证和测试数据子集。由深度学习神经网络算法开发的模型能够对某些牛肉切片(侧翼牛排和里脊肉)进行高达100%的准确度分类。使用两个预训练的卷积神经网络(CNN)模型Visual Geometry Group(VGG16)和Inception ResNet V2对这些模型进行训练、验证和测试,以对牛肉切片图像进行分类。在卷积神经网络模型中引入了图像增强技术,以避免过拟合问题,这表明图像分类器模型的性能有所提高。VGG16模型的性能优于Inception ResNet V2模型。VGG16模型与数据增强技术相结合,能够在116张测试图像上实现98.6%的最高精度,而Inception ResNet V2在相同的测试图像上达到95.7%的最高精度。基于这两个模型的性能指标,深度学习技术显然在肉类科学行业的牛肉切片识别方面显示出了很有希望的努力。
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