Zheng Hui, Zhao Nan, Xu Saifei, He Jin, Ospina Ricardo, Qiu Zhengjun, Liu Yufei
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China.
College of Animal Sciences, Zhejiang University, Hangzhou 310058, China.
Foods. 2024 Jul 18;13(14):2270. doi: 10.3390/foods13142270.
Meat consumption is increasing globally. The safety and quality of meat are considered important issues for human health. During evaluations of meat quality and freshness, microbiological parameters are often analyzed. Counts of indicator cells can provide important references for meat quality. In order to eliminate the error of manual operation and improve detection efficiency, this paper proposed a Convolutional Neural Network (CNN) with a backbone called Detect-Cells-Rapidly-Net (DCRNet), which can identify and count stained cells automatically. The DCRNet replaces the single channel of residual blocks with the aggregated residual blocks to learn more features with fewer parameters. The DCRNet combines the deformable convolution network to fit flexible shapes of stained animal cells. The proposed CNN with DCRNet is self-adaptive to different resolutions of images. The experimental results indicate that the proposed CNN with DCRNet achieves an Average Precision of 81.2% and is better than traditional neural networks for this task. The difference between the results of the proposed method and manual counting is less than 0.5% of the total number of cells. The results indicate that DCRNet is a promising solution for cell detection and can be equipped in future meat quality monitoring systems.
全球肉类消费量正在增加。肉类的安全性和质量被视为对人类健康至关重要的问题。在评估肉类质量和新鲜度时,通常会分析微生物参数。指示细胞的计数可为肉类质量提供重要参考。为了消除人工操作误差并提高检测效率,本文提出了一种带有名为快速检测细胞网络(DCRNet)的骨干网络的卷积神经网络(CNN),它可以自动识别并计数染色细胞。DCRNet用聚合残差块取代了残差块的单通道,以用更少的参数学习更多特征。DCRNet结合了可变形卷积网络以适应染色动物细胞的灵活形状。所提出的带有DCRNet的CNN对不同分辨率的图像具有自适应性。实验结果表明,所提出的带有DCRNet的CNN实现了81.2%的平均精度,并且在此任务上优于传统神经网络。所提方法的结果与人工计数结果之间的差异小于细胞总数的0.5%。结果表明,DCRNet是一种有前途的细胞检测解决方案,可应用于未来的肉类质量监测系统。