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RMH-YOLO: A Refined Multi-Scale Architecture for Small-Target Detection in UAV Aerial Imagery
by
He, Min
, Yang, Fan
, Liu, Jiuxian
, Jin, Haochen
in
Accuracy
/ aerial monitoring
/ Altitude
/ Drone aircraft
/ dual-attention mechanism
/ Efficiency
/ Geospatial data
/ Innovations
/ Localization
/ multi-scale fusion
/ Semantics
/ Sensors
/ small-target detection
/ UAV imagery
/ Unmanned aerial vehicles
/ Vegetation
2025
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RMH-YOLO: A Refined Multi-Scale Architecture for Small-Target Detection in UAV Aerial Imagery
by
He, Min
, Yang, Fan
, Liu, Jiuxian
, Jin, Haochen
in
Accuracy
/ aerial monitoring
/ Altitude
/ Drone aircraft
/ dual-attention mechanism
/ Efficiency
/ Geospatial data
/ Innovations
/ Localization
/ multi-scale fusion
/ Semantics
/ Sensors
/ small-target detection
/ UAV imagery
/ Unmanned aerial vehicles
/ Vegetation
2025
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Do you wish to request the book?
RMH-YOLO: A Refined Multi-Scale Architecture for Small-Target Detection in UAV Aerial Imagery
by
He, Min
, Yang, Fan
, Liu, Jiuxian
, Jin, Haochen
in
Accuracy
/ aerial monitoring
/ Altitude
/ Drone aircraft
/ dual-attention mechanism
/ Efficiency
/ Geospatial data
/ Innovations
/ Localization
/ multi-scale fusion
/ Semantics
/ Sensors
/ small-target detection
/ UAV imagery
/ Unmanned aerial vehicles
/ Vegetation
2025
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RMH-YOLO: A Refined Multi-Scale Architecture for Small-Target Detection in UAV Aerial Imagery
Journal Article
RMH-YOLO: A Refined Multi-Scale Architecture for Small-Target Detection in UAV Aerial Imagery
2025
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Overview
Unmanned aerial vehicle (UAV) vision systems have been widely deployed for aerial monitoring applications, yet small-target detection in UAV imagery remains a significant challenge due to minimal pixel representation, substantial scale variations, complex background interference, and varying illumination conditions. Existing object detection algorithms struggle to maintain high accuracy when processing small targets with fewer than 32 × 32 pixels in UAV-captured scenes, particularly in complex environments where target-background confusion is prevalent. To address these limitations, this study proposes RMH-YOLO, a refined multi-scale architecture. The model incorporates four key innovations: a Refined Feature Module (RFM) that fuses channel and spatial attention mechanisms to enhance weak feature representation of small targets while maintaining contextual integrity; a Multi-scale Focus-and-Diffuse (MFFD) network that employs a focus-diffuse transmission pathway to preserve fine-grained spatial details from high-resolution layers and propagate them to semantic features; an efficient CS-Head detection architecture that utilizes parameter-sharing convolution to enable efficient processing on embedded platforms; and an optimized loss function combining Normalized Wasserstein Distance (NWD) with InnerCIoU to improve localization accuracy for small targets. Experimental validation on the VisDrone2019 dataset demonstrates that RMH-YOLO achieves a precision and recall of 53.0% and 40.4%, representing improvements of 8.8% and 7.4% over the YOLOv8n baseline. The proposed method attains mAP50 and mAP50:95 of 42.4% and 25.7%, corresponding to enhancements of 9.2% and 6.4%, respectively, while maintaining computational efficiency with only 1.3 M parameters and 16.7 G FLOPs. Experimental results confirm that RMH-YOLO effectively improves small-target detection accuracy while maintaining computational efficiency, demonstrating its broad application potential in diverse UAV aerial monitoring scenarios.
Publisher
MDPI AG
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