Deep Learning Models for Visual Inspection on Automotive Assembling Line
- URL: http://arxiv.org/abs/2007.01857v1
- Date: Thu, 2 Jul 2020 20:00:45 GMT
- Title: Deep Learning Models for Visual Inspection on Automotive Assembling Line
- Authors: Muriel Mazzetto and Marcelo Teixeira and \'Erick Oliveira Rodrigues
and Dalcimar Casanova
- Abstract summary: This paper proposes the use of deep learning-based methodologies to assist in visual inspection tasks.
The proposed approach is illustrated by four proofs of concept in a real automotive assembly line.
- Score: 2.594420805049218
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Automotive manufacturing assembly tasks are built upon visual inspections
such as scratch identification on machined surfaces, part identification and
selection, etc, which guarantee product and process quality. These tasks can be
related to more than one type of vehicle that is produced within the same
manufacturing line. Visual inspection was essentially human-led but has
recently been supplemented by the artificial perception provided by computer
vision systems (CVSs). Despite their relevance, the accuracy of CVSs varies
accordingly to environmental settings such as lighting, enclosure and quality
of image acquisition. These issues entail costly solutions and override part of
the benefits introduced by computer vision systems, mainly when it interferes
with the operating cycle time of the factory. In this sense, this paper
proposes the use of deep learning-based methodologies to assist in visual
inspection tasks while leaving very little footprints in the manufacturing
environment and exploring it as an end-to-end tool to ease CVSs setup. The
proposed approach is illustrated by four proofs of concept in a real automotive
assembly line based on models for object detection, semantic segmentation, and
anomaly detection.
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