使用掩模 R-CNN 对筑巢绿海龟的甲壳进行实例分割的方法

Mohamad Syahiran Soria, Khalif Amir Zakry, I. Hipiny, Hamimah Ujir, Ruhana Hassan, Alphonsus Ligori Jerry
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引用次数: 0

摘要

:本研究利用基于掩码区域的卷积神经网络(Mask R-CNN)对筑巢绿海龟图像提出了一种改进的实例分割方法。其目标是实现精确分割,生成适合未来重新识别任务的数据集。使用这种方法,我们可以自动提取龟壳作为兴趣区域(RoI),从而跳过人工分割这一劳动密集型的繁琐任务。由于图像数据集包含噪声、模糊边缘以及目标物体与背景之间的低对比度,因此这项任务并不轻松。这些图像缺陷是由多种因素造成的,包括摄像机运动造成的抖动镜头、在弱光环境下发生的嵌套事件,以及在数据收集过程中摄像机使用的互补金属氧化物半导体(CMOS)传感器的固有限制。CMOS 传感器会产生大量噪音,表现为像素亮度或颜色的随机变化,尤其是在弱光条件下。这些因素都会导致图像质量下降,从而在进行腕面 RoI 分割时造成困难。为了应对这些挑战,本研究建议将对比度限制自适应直方图均衡化(CLAHE)作为训练模型的数据预处理步骤。CLAHE 增强了对比度,提高了甲壳结构与背景元素之间的区分度。我们的研究结果表明,在结合 CLAHE 作为数据预处理步骤时,掩膜 R-CNN 非常有效。与单独使用掩膜 R-CNN 相比,使用 CLAHE 技术后,交集大于联合(IoU)值平均增加了 1.55%。最佳配置的 IoU 值为 93.35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Instance Segmentation Method for Nesting Green Sea Turtle’s Carapace using Mask R-CNN
: This research presents an improved instance segmentation method using Mask Region-based Convolutional Neural Network (Mask R-CNN) on nesting green sea turtles’ images. The goal is to achieve precise segmentation to produce a dataset fit for future re-identification tasks. Using this method, we can skip the labour-intensive and tedious task of manual segmentation by automatically extracting the carapace as the Region-of-Interest (RoI). The task is non-trivial as the image dataset contains noise, blurry edges, and low contrast between the target object and background. These image defects are due to several factors, including jittering footage due to camera motion, the nesting event occurring during a low-light environment, and the inherent limitation of the Complementary Metal-Oxide-Semiconductor (CMOS) sensor used in the camera during our data collection. The CMOS sensor produces a high level of noise, which can manifest as random variations in pixel brightness or colour, especially in low-light conditions. These factors contribute to the degradation of image quality, causing di ffi culties when performing RoI segmentation of the carapaces. To address these challenges, this research proposes including Contrast-Limited Adaptive Histogram Equalization (CLAHE) as the data pre-processing step to train the model. CLAHE enhances contrast and increases di ff erentiation between the carapace structure and the background elements. Our research findings demonstrate the e ff ectiveness of Mask R-CNN when combined with CLAHE as the data pre-processing step. With CLAHE technique, there is an average increase of 1.55% in Intersection over Union (IoU) value compared to using Mask R-CNN alone. The optimal configuration managed an IoU value of 93.35%.
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来源期刊
International Journal of Computing and Digital Systems
International Journal of Computing and Digital Systems Business, Management and Accounting-Management of Technology and Innovation
CiteScore
1.70
自引率
0.00%
发文量
111
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