As the treasure house of nature, the ocean contains abundant resources. But the coral reefs, which are crucial to the sustainable development of marine life, are facing a huge crisis because of the existence of COTS and other organisms. The protection of society through manual labor is limited and inefficient. The unpredictable nature of the marine environment also makes manual operations risky. The use of robots for underwater operations has become a trend. However, the underwater image acquisition has defects such as weak light, low resolution, and many interferences, while the existing target detection algorithms are not effective. Based on this, we propose an underwater target detection algorithm based on Attention Improved YOLOv5, called UTD-Yolov5. It can quickly and efficiently detect COTS, which in turn provides a prerequisite for complex underwater operations. We adjusted the original network architecture of YOLOv5 in multiple stages, including: replacing the original Backbone with a two-stage cascaded CSP (CSP2); introducing the visual channel attention mechanism module SE; designing random anchor box similarity calculation method etc. These operations enable UTD-Yolov5 to detect more flexibly and capture features more accurately. In order to make the network more efficient, we also propose optimization methods such as WBF and iterative refinement mechanism. This paper conducts a lot of experiments based on the CSIRO dataset [1]. The results show that the average accuracy of our UTD-Yolov5 reaches 78.54%, which is a great improvement compared to the baseline.
翻译:作为自然的宝藏,海洋蕴藏着丰富的资源。但珊瑚礁对于海洋生物的可持续发展至关重要,但珊瑚礁正面临巨大的危机,因为存在COTS和其他生物。通过体力劳动来保护社会是有限和低效率的。海洋环境的不可预测性也使人工操作成为风险。在水下操作中使用机器人已成为一个趋势。然而,水下图像的获取存在缺陷,如光弱、分辨率低和许多干扰,而现有目标探测算法则则则不起作用。在此基础上,我们提议在“注意改进YOLOv5”号、称为UTD-Yolov5号的基础上,采用水下目标探测算法。它能够快速和高效地探测COTS,而这反过来又为复杂的水下作业提供了先决条件。我们在不同阶段调整了YOLOv5的原始网络结构,包括:用双级级的CSP(CSP2)取代原始的后骨架,介绍视觉频道关注机制SEEE;设计随机锚测算箱等。这些操作使UTD-Yolov5号能够更灵活和捕捉捉取到更精确的功能,这又提供了更精确的CAFIFSBSBRA的精确的模型,以便更精确地展示了我们的C-SBSBSBSBSBSBSBR的模型,从而更精确地展示了我们的文件。