[HTML][HTML] Aircraft target detection in low signal-to-noise ratio visible remote sensing images

R Niu, X Zhi, S Jiang, J Gong, W Zhang, L Yu�- Remote Sensing, 2023 - mdpi.com
R Niu, X Zhi, S Jiang, J Gong, W Zhang, L Yu
Remote Sensing, 2023mdpi.com
With the increasing demand for the wide-area refined detection of aircraft targets, remote
sensing cameras have adopted an ultra-large area-array detector as a new imaging mode to
obtain broad width remote sensing images (RSIs) with higher resolution. However, this
imaging technology introduces new special image degradation characteristics, especially
the weak target energy and the low signal-to-noise ratio (SNR) of the image, which seriously
affect the target detection capability. To address the aforementioned issues, we propose an�…
With the increasing demand for the wide-area refined detection of aircraft targets, remote sensing cameras have adopted an ultra-large area-array detector as a new imaging mode to obtain broad width remote sensing images (RSIs) with higher resolution. However, this imaging technology introduces new special image degradation characteristics, especially the weak target energy and the low signal-to-noise ratio (SNR) of the image, which seriously affect the target detection capability. To address the aforementioned issues, we propose an aircraft detection method for RSIs with low SNR, termed L-SNR-YOLO. In particular, the backbone is built blending a swin-transformer and convolutional neural network (CNN), which obtains multiscale global and local RSI information to enhance the algorithm’s robustness. Moreover, we design an effective feature enhancement (EFE) block integrating the concept of nonlocal means filtering to make the aircraft features significant. In addition, we utilize a novel loss function to optimize the detection accuracy. The experimental results demonstrate that our L-SNR-YOLO achieves better detection performance in RSIs than several existing advanced methods.
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