CARVING-DETC: A network scaling and NMS ensemble for Balinese carving motif detection method

IF 3.8 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Visual Informatics Pub Date : 2023-09-01 DOI:10.1016/j.visinf.2023.05.004
I Wayan Agus Surya Darma , Nanik Suciati , Daniel Siahaan
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Abstract

Balinese carvings are cultural objects that adorn sacred buildings. The carvings consist of several motifs, each representing the values adopted by the Balinese people. Detection of Balinese carving motifs is challenging due to the unavailability of a Balinese carving dataset for detection tasks, high variance, and tiny-size carving motifs. This research aims to improve carving motif detection performance on challenging Balinese carving motifs detection task through a modification of YOLOv5 to support a digital carving conservation system. We proposed CARVING-DETC, a deep learning-based Balinese carving detection method consisting of three steps. First, the data generation step performs data augmentation and annotation on Balinese carving images. Second, we proposed a network scaling strategy on the YOLOv5 model and performed non-maximum suppression (NMS) on the model ensemble to generate the most optimal predictions. The ensemble model utilizes NMS to produce higher performance by optimizing the detection results based on the highest confidence score and suppressing other overlap predictions with a lower confidence score. Third, performance evaluation on scaled-YOLOv5 versions and NMS ensemble models. The research findings are beneficial in conserving the cultural heritage and as a reference for other researchers. In addition, this study proposed a novel Balinese carving dataset through data collection, augmentation, and annotation. To our knowledge, it is the first Balinese carving dataset for the object detection task. Based on experimental results, CARVING-DETC achieved a detection performance of 98%, which outperforms the baseline model.

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基于网络缩放与NMS的巴厘雕刻母题检测方法
巴厘岛的雕刻是装饰神圣建筑的文化物品。这些雕刻品由几个图案组成,每个图案都代表了巴厘岛人民所采用的价值观。由于无法获得用于检测任务的巴厘岛雕刻数据集、高方差和微小的雕刻图案,巴厘岛雕刻图案的检测具有挑战性。本研究旨在通过对YOLOv5的修改来支持数字雕刻保护系统,从而提高具有挑战性的巴厘岛雕刻图案检测任务中的雕刻图案检测性能。我们提出了CARVING-DETC,这是一种基于深度学习的巴厘岛雕刻检测方法,由三个步骤组成。首先,数据生成步骤对巴厘岛雕刻图像进行数据扩充和注释。其次,我们在YOLOv5模型上提出了一种网络缩放策略,并对模型集成进行了非最大值抑制(NMS),以生成最优化的预测。集成模型利用NMS通过基于最高置信度得分优化检测结果并抑制具有较低置信度得分的其他重叠预测来产生更高的性能。第三,扩展YOLOv5版本和NMS集成模型的性能评估。研究结果有利于保护文化遗产,也可为其他研究人员提供参考。此外,本研究通过数据收集、扩充和注释,提出了一个新颖的巴厘岛雕刻数据集。据我们所知,这是第一个用于物体检测任务的巴厘岛雕刻数据集。基于实验结果,CARVING-DETC实现了98%的检测性能,优于基线模型。
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来源期刊
Visual Informatics
Visual Informatics Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.70
自引率
3.30%
发文量
33
审稿时长
79 days
期刊最新文献
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