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基于深度学习算法的鸡部位自动分类与检测研究

Research on automatic classification and detection of chicken parts based on deep learning algorithm.

作者信息

Chen Yan, Peng Xianhui, Cai Lu, Jiao Ming, Fu Dandan, Xu Chen Chen, Zhang Peng

机构信息

School of Mechanical Engineering, Wuhan Polytechnic University, Wuhan, China.

出版信息

J Food Sci. 2023 Oct;88(10):4180-4193. doi: 10.1111/1750-3841.16747. Epub 2023 Sep 1.

DOI:10.1111/1750-3841.16747
PMID:37655508
Abstract

Accurate classification and identification of chicken parts are critical to improve the productivity and processing speed in poultry processing plants. However, the overlapping of chicken parts has an impact on the effectiveness of the identification process. To solve this issue, this study proposed a real-time classification and detection method for chicken parts, utilizing YOLOV4 deep learning. The method can identify segmented chicken parts on the assembly line in real time and accurately, thus improving the efficiency of poultry processing. First, 600 images containing multiple chicken part samples were collected to build a chicken part dataset after using the image broadening technique, and then the dataset was divided according to the 6:2:2 division principle, with 1200 images as the training set, 400 images as the test set, and 400 images as the validation set. Second, we utilized the single-stage target detector YOLO to predict and calculate the chicken part images, obtaining the categories and positions of the chicken leg, chicken wing, and chicken breast in the image. This allowed us to achieve real-time classification and detection of chicken parts. This approach enabled real-time and efficient classification and detection of chicken parts. Finally, the mean average precision (mAP) and the processing time per image were utilized as key metrics to evaluate the effectiveness of the model. In addition, four other target detection algorithms were introduced for comparison with YOLOV4-CSPDarknet53 in this study, which include YOLOV3-Darknet53, YOLOV3-MobileNetv3, SSD-MobileNetv3, and SSD-VGG16. A comprehensive comparison test was conducted to assess the classification and detection performance of these models for chicken parts. Finally, for the chicken part dataset, the mAP of the YOLOV4-CSPDarknet53 model was 98.86% on a single image with an inference speed of 22.2 ms, which was higher than the other four models of YOLOV3-Darknet53, YOLOV3-MobileNetv3, SSD-MobileNetv3, and SSD-VGG16 mAP by 3.27%, 3.78%, 6.91%, and 6.13%, respectively. The average detection time was reduced by 13, 1.9, 6.2, and 20.3 ms, respectively. In summary, the chicken part classification and detection method proposed in this study offers numerous benefits, including the ability to detect multiple chicken parts simultaneously, as well as delivering high levels of accuracy and speed. Furthermore, this approach effectively addresses the issue of accurately identifying individual chicken parts in the presence of occlusion, thereby reducing waste on the assembly line. PRACTICAL APPLICATION: The aim of this study is to offer visual technical assistance in minimizing wastage and resource depletion during the sorting and cutting of chicken parts in poultry production and processing facilities. Furthermore, considering the diverse demands and preferences regarding chicken parts, this research can facilitate product processing that caters specifically to consumer preferences.

摘要

准确分类和识别鸡肉部位对于提高家禽加工厂的生产效率和加工速度至关重要。然而,鸡肉部位的重叠会影响识别过程的有效性。为了解决这个问题,本研究提出了一种利用YOLOV4深度学习的鸡肉部位实时分类和检测方法。该方法可以实时、准确地识别流水线上分割的鸡肉部位,从而提高家禽加工效率。首先,收集了600张包含多个鸡肉部位样本的图像,在使用图像扩展技术后构建了一个鸡肉部位数据集,然后根据6:2:2的划分原则对数据集进行划分,其中1200张图像作为训练集,400张图像作为测试集,400张图像作为验证集。其次,我们利用单阶段目标检测器YOLO对鸡肉部位图像进行预测和计算,得到图像中鸡腿、鸡翅和鸡胸的类别和位置。这使我们能够实现鸡肉部位的实时分类和检测。这种方法能够对鸡肉部位进行实时、高效的分类和检测。最后,使用平均精度均值(mAP)和每张图像的处理时间作为关键指标来评估模型的有效性。此外,本研究还引入了其他四种目标检测算法与YOLOV4-CSPDarknet53进行比较,包括YOLOV3-Darknet53、YOLOV3-MobileNetv3、SSD-MobileNetv3和SSD-VGG16。进行了全面的比较测试,以评估这些模型对鸡肉部位的分类和检测性能。最后,对于鸡肉部位数据集,YOLOV4-CSPDarknet53模型在单张图像上的mAP为98.86%,推理速度为22.2毫秒,分别比YOLOV3-Darknet53、YOLOV3-MobileNetv3、SSD-MobileNetv3和SSD-VGG16这四种模型的mAP高3.27%、3.78%、6.91%和6.13%。平均检测时间分别减少了13、1.9、6.2和20.3毫秒。综上所述,本研究提出的鸡肉部位分类和检测方法具有诸多优点,包括能够同时检测多个鸡肉部位,以及提供高水平的准确性和速度。此外,这种方法有效地解决了在存在遮挡的情况下准确识别单个鸡肉部位的问题,从而减少了流水线上的浪费。实际应用:本研究的目的是提供视觉技术支持,以尽量减少家禽生产和加工设施中鸡肉部位分拣和切割过程中的浪费和资源消耗。此外,考虑到对鸡肉部位的不同需求和偏好,本研究可以促进专门迎合消费者偏好的产品加工。

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