MAFFN_YOLOv5: Multi-Scale Attention Feature Fusion Network on the YOLOv5 Model for the Health Detection of Coral-Reefs Using a Built-In Benchmark Dataset

Sivamani Kalyana Sundara Rajan, Nedumaran Damodaran
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引用次数: 2

Abstract

Coral-reefs are a significant species in marine life, which are affected by multiple diseases due to the stress and variation in heat under the impact of the ocean. The autonomous monitoring and detection of coral health are crucial for researchers to protect it at an early stage. The detection of coral diseases is a difficult task due to the inadequate coral-reef datasets. Therefore, we have developed a coral-reef benchmark dataset and proposed a Multi-scale Attention Feature Fusion Network (MAFFN) as a neck part of the YOLOv5’s network, called “MAFFN_YOLOv5”. The MAFFN_YOLOv5 model outperforms the state-of-the-art object detectors, such as YOLOv5, YOLOX, and YOLOR, by improving the detection accuracy to 8.64%, 3.78%, and 18.05%, respectively, based on the mean average precision (mAP@.5), and 7.8%, 3.72%, and 17.87%, respectively, based on the mAP@.5:.95. Consequently, we have tested a hardware-based deep neural network for the detection of coral-reef health.
MAFFN_YOLOv5:基于内置基准数据集的YOLOv5模型的多尺度关注特征融合网络珊瑚礁健康检测
珊瑚礁是海洋生物中的重要物种,在海洋的影响下,由于压力和热量的变化,珊瑚礁受到多种疾病的影响。珊瑚健康的自主监测和检测对于研究人员在早期阶段保护珊瑚至关重要。由于珊瑚礁数据集不足,珊瑚疾病的检测是一项艰巨的任务。因此,我们开发了一个珊瑚礁基准数据集,并提出了一个多尺度注意力特征融合网络(MAFFN)作为YOLOv5网络的颈部部分,称为“MAFFN_YOLOv5”。基于平均精度(mAP@.5), MAFFN_YOLOv5模型的检测精度分别提高到8.64%、3.78%和18.05%,基于mAP@.5: 0.95, MAFFN_YOLOv5模型的检测精度分别提高到7.8%、3.72%和17.87%,优于目前最先进的目标检测器YOLOv5、YOLOX和YOLOR。因此,我们测试了一个基于硬件的深度神经网络来检测珊瑚礁的健康状况。
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