Department of Computer Engineering, Chosun University, Gwangju, 61452, Republic of Korea.
Sci Rep. 2023 Nov 9;13(1):19461. doi: 10.1038/s41598-023-46971-7.
Corals are sessile invertebrates living underwater in colorful structures known as reefs. Unfortunately, coral's temperature sensitivity is causing color bleaching, which hosts organisms that are crucial and consequently affect marine pharmacognosy. To address this problem, many researchers are developing cures and treatment procedures to restore bleached corals. However, before the cure, the researchers need to precisely localize the bleached corals in the Great Barrier Reef. The researchers have developed various visual classification frameworks to localize bleached corals. However, the performance of those techniques degrades with variations in illumination, orientation, scale, and view angle. In this paper, we develop highly noise-robust and invariant robust localization using bag-of-hybrid visual features (RL-BoHVF) for bleached corals by employing the AlexNet DNN and ColorTexture handcrafted by raw features. It is observed that the overall dimension is reduced by using the bag-of-feature method while achieving a classification accuracy of 96.20% on the balanced dataset collected from the Great Barrier Reef of Australia. Furthermore, the localization performance of the proposed model was evaluated on 342 images, which include both train and test segments. The model achieved superior performance compared to other standalone and hybrid DNN and handcrafted models reported in the literature.
珊瑚是生活在水下的固着无脊椎动物,它们生活在被称为珊瑚礁的多彩结构中。不幸的是,珊瑚对温度敏感,导致颜色褪色,这会影响到宿主生物,而这些宿主生物对海洋药物学至关重要。为了解决这个问题,许多研究人员正在开发治疗方法和治疗程序来恢复褪色的珊瑚。然而,在治疗之前,研究人员需要精确地定位大堡礁中的褪色珊瑚。研究人员已经开发了各种视觉分类框架来定位褪色珊瑚。然而,随着光照、方向、比例和视角的变化,这些技术的性能会下降。在本文中,我们通过使用 AlexNet DNN 和由原始特征手工制作的 ColorTexture,开发了高度抗噪和不变的鲁棒定位方法(RL-BoHVF),用于定位褪色珊瑚。观察到,在使用特征袋方法时,整体维度降低了,同时在从澳大利亚大堡礁收集的平衡数据集中实现了 96.20%的分类精度。此外,还在 342 张图像上评估了该模型的定位性能,这些图像包括训练和测试部分。与文献中报道的其他独立和混合 DNN 和手工制作模型相比,该模型表现出色。