Shape adaptive sensing network for Slender and rotating target detection
- jian guo,
- zhengbiao jing,
- donglin jing
zhengbiao jing
Chengdu Vocational& Technical College of Industry
Author ProfileAbstract
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Abstract text. Recently, the rotating target detector has been widely
used in remote sensing images. However, the existing methods often use a
large number of preset rotating anchor to cover the target, without
taking into account the interference caused by the shape change of the
aerial target with high aspect ratio during the training, which is
mainly reflected in the following two points: 1) missing high-quality
positive samples that cover the critical information of slender targets
2) the gradient with the sharply changing causes training instability.
In order to meet these challenges, we have designed a sample assignment
strategy that can adapt to targets with different aspect ratios, and a
training strategy that can more stably and accurately regression the
bounding box with high aspect ratio. Specifically, first of all, the
designed Shape Adaptive Label Assignment strategy introduces a weight
function based on the IoU. Secondly, Gradient Equalization Regression
Loss function is proposed to effectively alleviate the gradient
instability of large aspect ratio targets during regression and make the
model have better convergence. A series of experiments on DOTA and
HRSC2016 datasets have confirmed the effectiveness of the proposed
strategy.04 Jul 2024Submitted to Electronics Letters 09 Oct 2024Submission Checks Completed
09 Oct 2024Assigned to Editor
09 Oct 2024Review(s) Completed, Editorial Evaluation Pending
20 Oct 2024Reviewer(s) Assigned