Extracting Tailings Ponds from High Spatial Resolution Remote Sensing Images using Improved YOLOv5 and SegFormer
Sun, Zhenhui
Sun, Yunxiao
Meng, Qingyan
Jancsó, Tamás
2025-08-05T11:25:47Z
2025-08-05T11:25:47Z
2025
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/31929
Dam failures in tailings ponds pose severe threats to nearby ecosystems,
residents' lives, and property. Therefore, accurately and efficiently extracting information
on tailings ponds is essential. Remote sensing technology has become a crucial tool for
periodic and precise detection of these ponds. However, tailings ponds vary significantly in
color, scale, and shape, often blending with their surroundings, which limits the
effectiveness of traditional remote sensing methods. In this paper, we propose a framework
for extracting tailings ponds from high-resolution remote sensing images using an
improved YOLOv5 and SegFormer. Our improved YOLOv5 incorporates the coordinate
attention (CA) and Transformer attention mechanisms into the C3 module of the backbone,
creating new C3CA and C3TR modules that form a hybrid attention mechanism backbone.
For the neck network, we build on YOLOv6's Bi-directional Concatenation (BiC) module,
replacing the nearest-neighbor interpolation with transposed convolution, and designing a
new BiCT module to create the BiC Transposed Convolution Path Aggregation Network
(BiCTPAN). Following detection by the improved YOLOv5, SegFormer is used to
accurately delineate tailings pond boundaries. The results show that the improved
YOLOv5s achieves an mAP@0.5 of 90.10%, a 4.8% increase over the original YOLOv5s,
with minimal impact on parameters and Floating-Point Operations per Second (FLOPs).
The SegFormer model achieves an Intersection over Union (IoU) of 87.45% and an
accuracy of 94.1%, demonstrating excellent extraction performance.
hu_HU
dc.format
PDF
hu_HU
en
hu_HU
Extracting Tailings Ponds from High Spatial Resolution Remote Sensing Images using Improved YOLOv5 and SegFormer
hu_HU
Open access
hu_HU
Óbudai Egyetem
hu_HU
Budapest
hu_HU
Óbudai Egyetem
hu_HU
Műszaki tudományok - multidiszciplináris műszaki tudományok