Conference paper Open Access

A DCNN-based Arbitrarily-Oriented Object Detector for a Quality-Control Application

Kai Yao; Alberto Ortiz; Francisco Bonnin-Pascual

Following the success of machine vision systems for on-line automated quality and process control, in this paper we describe an object recognition solution aiming at detecting the presence of quality control elements in surgery toolboxes prepared by the Sterilization Unit of a hospital. Our solution actually consists in a two-stage arbitrarily-oriented object detection method making use of indirect regression of oriented bounding boxes parameters. The paper describes the design process and reports on the results obtained up to date.

This is a preprint of publication with DOI: https://doi.org/10.1109/ETFA.2019.8869335. This work is also supported by projects PGC2018-095709-B-C21 (MCIU/AEI/FEDER, UE) and PROCOE/4/2017 (Govern Balear, 50% P.O. FEDER 2014-2020 Illes Balears).
Files (4.1 MB)
Name Size
ETFA2019_Yao_.pdf
md5:cb7d27356abf7ea78f44f7c0323b8ec4
4.1 MB Download
36
63
views
downloads
All versions This version
Views 3636
Downloads 6363
Data volume 255.7 MB255.7 MB
Unique views 2727
Unique downloads 6161

Share

Cite as