TY - JOUR
T1 - CCTV Image-based classification of blocked trash screens
AU - Cornelius Smith, Rory
AU - Barnes, Andy
AU - Wang , Jingjing
AU - Dooley, Simon
AU - Rowlatt, Christopher
AU - Kjeldsen, Thomas
PY - 2024/8/28
Y1 - 2024/8/28
N2 - This study introduces image-based classification techniques to identify whether trash screens in urban river are blocked. The study obtained 755 images from a CCTV camera surveying a trash screen located on an urban river at Tongwynlais in Cardiff. Manual quality control reduced the dataset to 577 images, labelled as either blocked (80%) or unblocked (20%). The performance of a logistic regression for classification of images was investigated using three different subsets of the labelled images: (1) the original dataset, (2) a balanced but under-sampled dataset with equal number of blocked and unblocked images, and (3) an augmented dataset with an equal number of blocked and unblocked images using gaussian noise augmentation to increase the number of unblocked images. Results show that our data-augmentation method enhanced model accuracy by 8%, successfully classifying images as blocked or unblocked with an accuracy of 88%; by overcoming the bias in the dataset these results also highlight solutions to overcome the challenges of operating this methodology across a network of cameras. This enables authorities in both data rich and data scarce regions the ability to take advantage of machine learning to open up the next generation of a distributed, data-driven flood warning systems, protecting people, infrastructure and the environment.
AB - This study introduces image-based classification techniques to identify whether trash screens in urban river are blocked. The study obtained 755 images from a CCTV camera surveying a trash screen located on an urban river at Tongwynlais in Cardiff. Manual quality control reduced the dataset to 577 images, labelled as either blocked (80%) or unblocked (20%). The performance of a logistic regression for classification of images was investigated using three different subsets of the labelled images: (1) the original dataset, (2) a balanced but under-sampled dataset with equal number of blocked and unblocked images, and (3) an augmented dataset with an equal number of blocked and unblocked images using gaussian noise augmentation to increase the number of unblocked images. Results show that our data-augmentation method enhanced model accuracy by 8%, successfully classifying images as blocked or unblocked with an accuracy of 88%; by overcoming the bias in the dataset these results also highlight solutions to overcome the challenges of operating this methodology across a network of cameras. This enables authorities in both data rich and data scarce regions the ability to take advantage of machine learning to open up the next generation of a distributed, data-driven flood warning systems, protecting people, infrastructure and the environment.
M3 - Article
SN - 1753-318X
JO - Journal of Flood Risk Management
JF - Journal of Flood Risk Management
ER -