Adaptive Slicing-Assisted Hyper Inference for Enhanced Small Object Detection in High-Resolution Imagery
Francesco Moretti, Yi Jin, Guiqin Mario

TL;DR
This paper introduces ASAHI, an adaptive slicing framework for small object detection in high-resolution imagery that reduces redundant computation and improves detection accuracy.
Contribution
The paper proposes a novel adaptive slicing method, a fine-tuning strategy, and a new post-processing module to enhance small object detection efficiency and accuracy.
Findings
Achieves state-of-the-art results on VisDrone2019 and xView datasets.
Reduces inference time by 20-25% compared to baseline methods.
Effectively detects small objects in crowded scenes with high accuracy.
Abstract
Deep learning-based object detectors have achieved remarkable success across numerous computer vision applications, yet they continue to struggle with small object detection in high-resolution aerial and satellite imagery, where dense object distributions, variable shooting angles, diminutive target sizes, and substantial inter-class variability pose formidable challenges. Existing slicing strategies that partition high-resolution images into manageable patches have demonstrated promising results for enlarging the effective receptive field of small targets; however, their reliance on fixed slice dimensions introduces significant redundant computation, inflating inference cost and undermining detection speed. In this paper, we propose \textbf{Adaptive Slicing-Assisted Hyper Inference (ASAHI)}, a novel slicing framework that shifts the paradigm from prescribing a fixed slice size to…
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