UCDN: A CenterNet-Based Dense Muti-scale Detection Fusion Net on Underwater Objects

Huipu Xu, Ying Yu, Xiangyang Long, Ziqi Zhu
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Abstract

Underwater object detection is an inevitable task with urgent practical importance in the field of economic marine life. Due to the special underwater optical environment, most of the existing common detection algorithms are not capable of providing ideal results for underwater objects. For this reason, this paper proposes a constructive CenterNet-based underwater object detection model, named UCDN, accompanied by a detection strategy with pervasive applicability. Specifically, a detailed fusion module is created with the goal of filtering out interfering information. Meanwhile, we propose an exclusive idea of dense scale linking to fuse multi-scale features as much as possible. More importantly, we fuse our detection network with the Frankle-McCann Retinex algorithm to detect more objects obscured by the environment without increasing the training consumption. In addition to this, an efficient automatic sample balancing strategy is proposed, which is well suited to our detection situation. Finally, we evaluate our algorithm on underwater image datasets. The experiment results showed that the precision (mAP) of UCDN reached 87.46% which was higher than existing state-of-the-art land-based detection algorithms and underwater detection algorithms.
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UCDN:基于centernet的水下目标密集多尺度检测融合网
水下目标检测是经济海洋生物领域一项不可避免的任务,具有迫切的现实意义。由于水下光学环境的特殊,现有的常用检测算法大多不能为水下目标提供理想的检测结果。为此,本文提出了一种建设性的基于centernet的水下目标检测模型UCDN,并提出了一种普适的检测策略。具体来说,创建了一个详细的融合模块,目的是滤除干扰信息。同时,我们提出了密集尺度连接的独特思路,尽可能地融合多尺度特征。更重要的是,我们将我们的检测网络与Frankle-McCann Retinex算法融合在一起,在不增加训练消耗的情况下检测出更多被环境遮挡的物体。此外,还提出了一种有效的自动样本平衡策略,该策略非常适合我们的检测情况。最后,在水下图像数据集上对算法进行了验证。实验结果表明,UCDN的精度(mAP)达到87.46%,高于现有最先进的陆基检测算法和水下检测算法。
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