DOAJ Open Access 2026

Empirical Evaluation of UNet for Segmentation of Applicable Surfaces for Seismic Sensor Installation

Mikhail Uzdiaev Marina Astapova Andrey Ronzhin Aleksandra Figurek

Abstrak

The deployment of wireless seismic nodal systems necessitates the efficient identification of optimal locations for sensor installation, considering factors such as ground stability and the absence of interference. Semantic segmentation of satellite imagery has advanced significantly, and its application to this specific task remains unexplored. This work presents a baseline empirical evaluation of the U-Net architecture for the semantic segmentation of surfaces applicable for seismic sensor installation. We utilize a novel dataset of Sentinel-2 multispectral images, specifically labeled for this purpose. The study investigates the impact of pretrained encoders (EfficientNetB2, Cross-Stage Partial Darknet53—CSPDarknet53, and Multi-Axis Vision Transformer—MAxViT), different combinations of Sentinel-2 spectral bands (Red, Green, Blue (RGB), RGB+Near Infrared (NIR), 10-bands with 10 and 20 m/pix spatial resolution, full 13-band), and a technique for improving small object segmentation by modifying the input convolutional layer stride. Experimental results demonstrate that the CSPDarknet53 encoder generally outperforms the others (IoU = 0.534, Precision = 0.716, Recall = 0.635). The combination of RGB and Near-Infrared bands (10 m/pixel resolution) yielded the most robust performance across most configurations. Reducing the input stride from 2 to 1 proved beneficial for segmenting small linear objects like roads. The findings establish a baseline for this novel task and provide practical insights for optimizing deep learning models in the context of automated seismic nodal network installation planning.

Penulis (4)

M

Mikhail Uzdiaev

M

Marina Astapova

A

Andrey Ronzhin

A

Aleksandra Figurek

Format Sitasi

Uzdiaev, M., Astapova, M., Ronzhin, A., Figurek, A. (2026). Empirical Evaluation of UNet for Segmentation of Applicable Surfaces for Seismic Sensor Installation. https://doi.org/10.3390/jimaging12010034

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Informasi Jurnal
Tahun Terbit
2026
Sumber Database
DOAJ
DOI
10.3390/jimaging12010034
Akses
Open Access ✓