Tile Surface Segmentation Using Deep Convolutional Encoder-Decoder Architecture

Evianita Dewi Fajrianti, Endah Suryawati Ningrum, Anhar Risnumawan, Kerent Vidia Madalena
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引用次数: 1

Abstract

Visual inspection systems in industries have increasingly gained a lot of interests. Advances in manufacturing activities have led to mass production in order to reduce overall operational cost. The visual inspection systems provide instant quantitative feedback such as quantity and type of defects. In this paper, we present a visual inspection method of tiles industry using a deep learning approach. The deep learning approach is employed for segmenting cracks and backgrounds in tiles. Due to the small size of the cracks, image segmentation is crucial. Architecture for segmenting semantic objects in a color image is the main inspiration to be applied on this paper. Semantic segmentation is widely applied for image analysis in the real world, one of which is to conduct a visual inspection of tile surfaces where each pixel input of high-resolution images is categorized into a set of semantic labels. In order to test the performance of the segmentation algorithm, SegNet architecture with the DeepLabV3plus were compared. A new dataset named UBIN is also proposed as a training and evaluation data. The training data that we have collected shows promising results on visual inspection when using the proposed algorithm. We believe that this work could improve to a more advanced manufacturing industries.
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基于深度卷积编码器-解码器结构的瓷砖表面分割
视觉检测系统在工业中越来越受到人们的关注。制造活动的进步导致了大规模生产,以降低总体运营成本。目视检查系统提供即时的定量反馈,如缺陷的数量和类型。在本文中,我们提出了一种使用深度学习方法的瓷砖行业视觉检测方法。采用深度学习方法对瓷砖中的裂缝和背景进行分割。由于裂纹尺寸小,图像分割是至关重要的。彩色图像中语义对象分割的体系结构是本文应用的主要灵感。语义分割在现实世界中被广泛应用于图像分析,其中一种方法是对瓷砖表面进行视觉检测,将高分辨率图像的每个像素输入分类为一组语义标签。为了测试分割算法的性能,将SegNet架构与DeepLabV3plus进行了比较。本文还提出了一个名为UBIN的新数据集作为训练和评估数据。我们收集的训练数据表明,使用本文提出的算法在视觉检测方面取得了良好的效果。我们相信,这项工作可以提高到一个更先进的制造业。
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