School of Electronics and Information Engineering, Guangdong Ocean University, Zhanjiang 524088, China.
Guangdong Provincial Key Laboratory of Intelligent Equipment for South China Sea Marine Ranching, Zhanjiang 524088, China.
Sensors (Basel). 2024 Jun 4;24(11):3647. doi: 10.3390/s24113647.
Accurate identification of (SD) offers crucial technical support for aquaculture practices and behavioral research of this species. However, the task of discerning from complex underwater settings, fluctuating light conditions, and schools of fish presents a challenge. This paper proposes an intelligent recognition model based on the YOLOv8 network called SD-YOLOv8. By adding a small object detection layer and head, our model has a positive impact on the recognition capabilities for both close and distant instances of , significantly improving them. We construct a convenient dataset and introduce the deformable convolution network v2 (DCNv2) to enhance the information extraction process. Additionally, we employ the bottleneck attention module (BAM) and redesign the spatial pyramid pooling fusion (SPPF) for multidimensional feature extraction and fusion. The Inner-MPDIoU bounding box regression function adjusts the scale factor and evaluates geometric ratios to improve box positioning accuracy. The experimental results show that our SD-YOLOv8 model achieves higher accuracy and average precision, increasing from 89.2% to 93.2% and from 92.2% to 95.7%, respectively. Overall, our model enhances detection accuracy, providing a reliable foundation for the accurate detection of fishes.
准确识别 (SD)为该物种的水产养殖实践和行为研究提供了关键的技术支持。然而,在复杂的水下环境、波动的光照条件和鱼群中辨别 是一项挑战。本文提出了一种基于 YOLOv8 网络的智能识别模型,称为 SD-YOLOv8。通过添加小物体检测层和头部,我们的模型对近距离和远距离的 识别能力有了积极的影响,显著提高了它们的识别能力。我们构建了一个方便的 数据集,并引入了变形卷积网络 v2(DCNv2)来增强信息提取过程。此外,我们采用瓶颈注意力模块(BAM)和重新设计的空间金字塔池融合(SPPF)进行多维特征提取和融合。内部-MPDIoU 边界框回归函数调整比例因子并评估几何比,以提高框定位精度。实验结果表明,我们的 SD-YOLOv8 模型实现了更高的准确性和平均精度,分别从 89.2%提高到 93.2%和从 92.2%提高到 95.7%。总的来说,我们的模型提高了检测精度,为鱼类的准确检测提供了可靠的基础。