Sewage and Location Detection with Improved Cycle Generative Adversarial Network-Based Augmented Datasets and YOLOv5-BiFC
Minkai Wang,
Chenglin Li,
Yunzhong Jiang
et al.
Abstract:Sewage discharge from outfalls significantly contaminates the environment. However, due to the unique characteristics of environmental policy, challenges such as data acquisition difficulties arise. This study introduces an enhanced approach by utilizing an improved Cycle GAN, the core function of which involves extrapolating a small sample to a large sample. An enhanced YOLOv5 model is used to focus on lightweight model construction and model performance enhancement. The proposed Cycle GAN incorporating Self-… Show more
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