S-BIRD: A Novel Critical Multi-Class Imagery Dataset for Sewer Monitoring and Maintenance Systems
Permanent lenke
https://hdl.handle.net/10037/30546Dato
2023-03-09Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
Computer vision in consideration of automated and robotic systems has come up as a
steady and robust platform in sewer maintenance and cleaning tasks. The AI revolution has enhanced
the ability of computer vision and is being used to detect problems with underground sewer pipes,
such as blockages and damages. A large amount of appropriate, validated, and labeled imagery
data is always a key requirement for learning AI-based detection models to generate the desired
outcomes. In this paper, a new imagery dataset S-BIRD (Sewer-Blockages Imagery Recognition
Dataset) is presented to draw attention to the predominant sewers’ blockages issue caused by grease,
plastic and tree roots. The need for the S-BIRD dataset and various parameters such as its strength,
performance, consistency and feasibility have been considered and analyzed for real-time detection
tasks. The YOLOX object detection model has been trained to prove the consistency and viability
of the S-BIRD dataset. It also specified how the presented dataset will be used in an embedded
vision-based robotic system to detect and remove sewer blockages in real-time. The outcomes of an
individual survey conducted at a typical mid-size city in a developing country, Pune, India, give
ground for the necessity of the presented work.
Er en del av
Patil, R.R. (2024). Enhancing AI Systems through Representative Dataset, Transfer Learning, and Embedded Vision. (Doctoral thesis). https://hdl.handle.net/10037/32925.Forlag
MDPISitering
Patil Ravindra R Patil, Mustafa , Calay RK, Ansari SM. S-BIRD: A Novel Critical Multi-Class Imagery Dataset for Sewer Monitoring and Maintenance Systems. Sensors. 2023;23(6)Metadata
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