Renormalized Connection for Scale-preferred Object Detection in Satellite Imagery
Fan Zhang, Lingling Li, Licheng Jiao, Xu Liu, Fang Liu, Shuyuan Yang,, Biao Hou

TL;DR
This paper introduces a renormalized connection (RC) mechanism within a Knowledge Discovery Network to improve multi-scale object detection in satellite imagery, effectively reducing interference and enhancing learning across various scale-preferred tasks.
Contribution
The paper proposes a novel RC method based on renormalization group theory, extending FPN-based detectors to better handle scale variations in satellite imagery.
Findings
RCs improve detection accuracy across multiple architectures.
The linear form E421C performs consistently well in all tasks.
Extensive experiments validate the effectiveness of RCs in scale-preferred detection.
Abstract
Satellite imagery, due to its long-range imaging, brings with it a variety of scale-preferred tasks, such as the detection of tiny/small objects, making the precise localization and detection of small objects of interest a challenging task. In this article, we design a Knowledge Discovery Network (KDN) to implement the renormalization group theory in terms of efficient feature extraction. Renormalized connection (RC) on the KDN enables ``synergistic focusing'' of multi-scale features. Based on our observations of KDN, we abstract a class of RCs with different connection strengths, called n21C, and generalize it to FPN-based multi-branch detectors. In a series of FPN experiments on the scale-preferred tasks, we found that the ``divide-and-conquer'' idea of FPN severely hampers the detector's learning in the right direction due to the large number of large-scale negative samples and…
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Taxonomy
Methods1x1 Convolution · Convolution · Focal Loss · Feature Pyramid Network
