College of Mechanical and Electronic Engineering, Shandong Agricultural University, Tai'an 271018, China; Shandong Provincial Engineering Laboratory of Agricultural Equipment Intelligence, Shandong Provincial Key Laboratory of Horticultural Machineries and Equipment, Tai'an 271018, China.
Atta-ur-Rahman School of Applied Biosciences, National University of Sciences and Technology, Islamabad 44000, Pakistan.
Poult Sci. 2024 Jun;103(6):103663. doi: 10.1016/j.psj.2024.103663. Epub 2024 Mar 15.
The enclosed multistory poultry housing is a type of poultry enclosure widely used in industrial caged chicken breeding. Accurate identification and detection of the comb and eyes of caged chickens in poultry farms using this type of enclosure can enhance managers' understanding of the health of caged chickens. However, the accuracy of image detection of caged chickens will be affected by the enclosure's entrance, which will reduce the precision. Therefore, this paper proposes a cage-gate removal algorithm based on big data and deep learning Cyclic Consistent Migration Neural Network (CCMNN). The method achieves automatic elimination and restoration of some key information in the image through the CCMNN network. The Structural Similarity Index Measure (SSIM) between the recovered and original images on the test set is 91.14%. Peak signal-to-noise ratio (PSNR) is 25.34dB. To verify the practicability of the proposed method, the performance of the target detection algorithm is analyzed both before and after applying the CCMNN network in detecting the combs and eyes of caged chickens. Different YOLOv8 detection algorithms, including YOLOv8s, YOLOv8n, YOLOv8m, and YOLOv8x, were used to verify the algorithm proposed in this paper. The experimental results demonstrate that compared to images without CCMNN processing, the precision of comb detection of caged chickens is improved by 11, 11.3, 12.8, and 10.2%. Similarly, the precision of eye detection for caged chickens is improved by 2.4, 10.2, 6.8, and 9%. Therefore, more complete outline images of caged chickens can be obtained using this algorithm and the precision in detecting the comb and eyes of caged chickens can be enhanced. These advancements in the algorithm offer valuable insights for future poultry researchers aiming to deploy enhanced detection equipment, thereby contributing to the accurate assessment of poultry production and farm conditions.
所附的多层家禽围栏是一种广泛应用于工业笼养肉鸡的家禽围栏。在这种围栏的家禽养殖场中,准确识别和检测笼养鸡的鸡冠和眼睛,可以增强饲养员对笼养鸡健康状况的了解。但是,围栏的入口会影响笼养鸡的图像检测精度,从而降低精度。因此,本文提出了一种基于大数据和深度学习循环一致性迁移神经网络(CCMNN)的笼门去除算法。该方法通过 CCMNN 网络实现了对图像中一些关键信息的自动消除和恢复。在测试集上,恢复图像与原始图像之间的结构相似性指数测量(SSIM)为 91.14%。峰值信噪比(PSNR)为 25.34dB。为了验证所提出方法的实用性,在检测笼养鸡的鸡冠和眼睛时,分析了在 CCMNN 网络前后应用目标检测算法的性能。使用不同的 YOLOv8 检测算法,包括 YOLOv8s、YOLOv8n、YOLOv8m 和 YOLOv8x,验证了本文提出的算法。实验结果表明,与没有 CCMNN 处理的图像相比,笼养鸡鸡冠检测的精度提高了 11%、11.3%、12.8%和 10.2%。同样,笼养鸡眼睛检测的精度提高了 2.4%、10.2%、6.8%和 9%。因此,使用该算法可以获得更完整的笼养鸡轮廓图像,并提高对笼养鸡鸡冠和眼睛的检测精度。该算法的这些改进为未来希望部署增强型检测设备的家禽研究人员提供了有价值的见解,有助于准确评估家禽生产和农场条件。