HiSEG: Human assisted instance segmentation

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING Computers & Graphics-Uk Pub Date : 2024-08-26 DOI:10.1016/j.cag.2024.104061
Muhammed Korkmaz, T. Metin Sezgin
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Abstract

Instance segmentation is a form of image detection which has a range of applications, such as object refinement, medical image analysis, and image/video editing, all of which demand a high degree of accuracy. However, this precision is often beyond the reach of what even state-of-the-art, fully automated instance segmentation algorithms can deliver. The performance gap becomes particularly prohibitive for small and complex objects. Practitioners typically resort to fully manual annotation, which can be a laborious process. In order to overcome this problem, we propose a novel approach to enable more precise predictions and generate higher-quality segmentation masks for high-curvature, complex and small-scale objects. Our human-assisted segmentation method, HiSEG, augments the existing Strong Mask R-CNN network to incorporate human-specified partial boundaries. We also present a dataset of hand-drawn partial object boundaries, which we refer to as “human attention maps”. In addition, the Partial Sketch Object Boundaries (PSOB) dataset contains hand-drawn partial object boundaries which represent curvatures of an object’s ground truth mask with several pixels. Through extensive evaluation using the PSOB dataset, we show that HiSEG outperforms state-of-the art methods such as Mask R-CNN, Strong Mask R-CNN, Mask2Former, and Segment Anything, achieving respective increases of +42.0, +34.9, +29.9, and +13.4 points in APMask metrics for these four models. We hope that our novel approach will set a baseline for future human-aided deep learning models by combining fully automated and interactive instance segmentation architectures.

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HiSEG:人工辅助实例分割
实例分割是图像检测的一种形式,在物体细化、医学图像分析和图像/视频编辑等方面有广泛的应用,所有这些应用都要求很高的精确度。然而,即使是最先进的全自动实例分割算法也往往无法达到这种精度。对于小而复杂的对象来说,性能差距变得尤其令人望而却步。实践者通常会采用全手动标注的方法,这可能是一个费力的过程。为了克服这一问题,我们提出了一种新方法,以实现更精确的预测,并为高曲率、复杂和小型物体生成更高质量的分割掩码。我们的人工辅助分割方法 HiSEG 增强了现有的强掩码 R-CNN 网络,纳入了人类指定的部分边界。我们还提出了一个手绘部分物体边界的数据集,我们将其称为 "人类注意力地图"。此外,部分草图对象边界(PSOB)数据集包含手绘的部分对象边界,它代表了对象的地面实况掩模的几个像素的曲率。通过使用 PSOB 数据集进行广泛评估,我们发现 HiSEG 优于 Mask R-CNN、Strong Mask R-CNN、Mask2Former 和 Segment Anything 等最先进的方法,这四种模型的 APMask 指标分别提高了 +42.0、+34.9、+29.9 和 +13.4。我们希望,通过结合全自动和交互式实例分割架构,我们的新方法将为未来的人类辅助深度学习模型设定基准。
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来源期刊
Computers & Graphics-Uk
Computers & Graphics-Uk 工程技术-计算机:软件工程
CiteScore
5.30
自引率
12.00%
发文量
173
审稿时长
38 days
期刊介绍: Computers & Graphics is dedicated to disseminate information on research and applications of computer graphics (CG) techniques. The journal encourages articles on: 1. Research and applications of interactive computer graphics. We are particularly interested in novel interaction techniques and applications of CG to problem domains. 2. State-of-the-art papers on late-breaking, cutting-edge research on CG. 3. Information on innovative uses of graphics principles and technologies. 4. Tutorial papers on both teaching CG principles and innovative uses of CG in education.
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