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Carcass image segmentation using CNN-based methods
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作者 Diogo Nunes Goncalves Vanessa Aparecida de Moares Weber +5 位作者 Julia Gindri Bragato Pistori Rodrigo da Costa Gomes Anderson Vicoso de Araujo Marcelo Fontes Pereira Wesley Nunes Goncalves Hemerson Pistori 《Information Processing in Agriculture》 EI 2021年第4期560-572,共13页
Carcass grading can be used as an important metric to determine meat quality.However,carcass grading is usually performed by a specialist,making it a subjective and errorprone task.To increase the accuracy of such tas... Carcass grading can be used as an important metric to determine meat quality.However,carcass grading is usually performed by a specialist,making it a subjective and errorprone task.To increase the accuracy of such task,image-based systems have been proposed in the literature.One of the most important parts of an image-based system is the image segmentation,which aims to identify the regions of the carcass in the image.In this paper,we propose the use of two recent image segmentation methods called Superpixel+CNN(Convolutional Neural Network)and SegNet.To evaluate both methods,we have also built a dataset of carcass images and their ground-truths.Results of approximately 96%of pixel accuracy show the robustness of the methods in carcass image segmentation.The novelty of this work is the proposal and comparison of recent deep learning methods that use CNN and superpixels in carcass segmentation.In this way,the methods can be used in carcass grading systems to increase the accuracy of the grading task. 展开更多
关键词 carcass grading Image segmentation Convolutional neural networks Superpixels
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