Reliable Detection of Minute Targets in High-Resolution Aerial Imagery across Temporal Shifts
- URL: http://arxiv.org/abs/2512.11360v1
- Date: Fri, 12 Dec 2025 08:20:11 GMT
- Title: Reliable Detection of Minute Targets in High-Resolution Aerial Imagery across Temporal Shifts
- Authors: Mohammad Sadegh Gholizadeh, Amir Arsalan Rezapour, Hamidreza Shayegh, Ehsan Pazouki,
- Abstract summary: This paper addresses the detection of rice seedlings in paddy fields by leveraging a Faster R-CNN architecture via transfer learning.<n>We curate a significant UAV dataset for training and rigorously evaluate the model's generalization capabilities.
- Score: 1.0499611180329804
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Efficient crop detection via Unmanned Aerial Vehicles is critical for scaling precision agriculture, yet it remains challenging due to the small scale of targets and environmental variability. This paper addresses the detection of rice seedlings in paddy fields by leveraging a Faster R-CNN architecture initialized via transfer learning. To overcome the specific difficulties of detecting minute objects in high-resolution aerial imagery, we curate a significant UAV dataset for training and rigorously evaluate the model's generalization capabilities. Specifically, we validate performance across three distinct test sets acquired at different temporal intervals, thereby assessing robustness against varying imaging conditions. Our empirical results demonstrate that transfer learning not only facilitates the rapid convergence of object detection models in agricultural contexts but also yields consistent performance despite domain shifts in image acquisition.
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