Detection of liquid leaks using image recognition in chemical supply and production facilities

In cooperation with the pharmaceutical company F. Hoffmann-La Roche Ltd, the underlying thesis examined the possibility of detecting liquid leaks directly on the pipes in an industrial environment using image recognition as part of a proof of concept.

Bolliger, Kevin, 2020

Type of Thesis Bachelor Thesis
Client F. Hoffmann-La Roche AG
Supervisor Riesen, Kaspar
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Liquid leaks are rare, but when they occur they can pose a significant security problem, depending on the escaping medium. Additionally, it requires clean-up work and may lead to delays in production or supply. At the moment, such detections are handled by sensors in or on the pipe. However, leaks are not always registered quickly enough by them, especially if the leaking medium happens only in small quantities. The thesis examines the feasibility of a visual detection approach for liquid leaks by evaluating various algorithms from the Computer Vision library OpenCV.
In a first section of the work, various methods for the detection of a scene change are examined by means of a literature review. This serves as the foundation for the experimental phase, in which video recordings of self-defined test cases are fed into algorithms in order to assess the success rate of detection of liquid leaks. All algorithms are based on the principle of Computer Vision and are evaluated in the respective test cases and compared with each other.
The experiment has proven the possibility of detecting liquid leaks in an industrial environment based on a Computer Vision approach. However, it turned out that visual recognition also poses challenges, with the influence of lighting being just one example that can certainly be optimized. However, the documentation of existing methods as well as the knowledge gained from practical application serve F. Hoffmann-La Roche Ltd as the basis for further development not only with regard to the detection of liquid leaks, but also other areas of application with the requirement for visual detection.
Studyprogram: Business Information Technology (Bachelor)
Keywords image recognition, industry, liquid leak, Computer Vision
Confidentiality: öffentlich
Type of Thesis
Bachelor Thesis
Client
F. Hoffmann-La Roche AG, Basel
Authors
Bolliger, Kevin
Supervisor
Riesen, Kaspar
Publication Year
2020
Thesis Language
English
Confidentiality
Public
Studyprogram
Business Information Technology (Bachelor)
Location
Basel
Keywords
image recognition, industry, liquid leak, Computer Vision