Generation of realistic synthetic cable images to train deep learning segmentation models
Malvido Fresnillo, Pablo; Mohammed, Wael; Vasudevan, Saigopal; Perez Garcia, Jose A.; Martinez Lastra, Jose L. (2024-06-20)
Malvido Fresnillo, Pablo
Mohammed, Wael
Vasudevan, Saigopal
Perez Garcia, Jose A.
Martinez Lastra, Jose L.
20.06.2024
84
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202407017454
https://urn.fi/URN:NBN:fi:tuni-202407017454
Kuvaus
Peer reviewed
Tiivistelmä
Semantic segmentation is one of the most important and studied problems in machine vision, which has been solved with high accuracy by many deep learning models. However, all these models present a significant drawback, they require large and diverse datasets to be trained. Gathering and annotating all these images manually would be extremely time-consuming, hence, numerous researchers have proposed approaches to facilitate or automate the process. Nevertheless, when the objects to be segmented are deformable, such as cables, the automation of this process becomes more challenging, as the dataset needs to represent their high diversity of shapes while keeping a high level of realism, and none of the existing solutions have been able to address it effectively. Therefore, this paper proposes a novel methodology to automatically generate highly realistic synthetic datasets of cables for training deep learning models in image segmentation tasks. This methodology utilizes Blender to create photo-realistic cable scenes and a Python pipeline to introduce random variations and natural deformations. To prove its performance, a dataset composed of 25000 synthetic cable images and their corresponding masks was generated and used to train six popular deep learning segmentation models. These models were then utilized to segment real cable images achieving outstanding results (over 70% IoU and 80% Dice coefficient for all the models). Both the methodology and the generated dataset are publicly available in the project’s repository.
Kokoelmat
- TUNICRIS-julkaisut [19236]