TL;DR
This paper introduces a dynamic high-frequency convolution (DHiF) that enhances infrared small target detection by adaptively modeling high-frequency components, improving detection accuracy across various networks.
Contribution
The novel DHiF operation explicitly models high-frequency components with dynamic filters, improving discriminative representation in infrared small target detection.
Findings
DHiF outperforms existing convolution methods in detection accuracy.
DHiF can be integrated into various networks without significant computational cost.
Extensive experiments validate the effectiveness of DHiF across datasets.
Abstract
Infrared small targets are typically tiny and locally salient, which belong to high-frequency components (HFCs) in images. Single-frame infrared small target (SIRST) detection is challenging, since there are many HFCs along with targets, such as bright corners, broken clouds, and other clutters. Current learning-based methods rely on the powerful capabilities of deep networks, but neglect explicit modeling and discriminative representation learning of various HFCs, which is important to distinguish targets from other HFCs. To address the aforementioned issues, we propose a dynamic high-frequency convolution (DHiF) to translate the discriminative modeling process into the generation of a dynamic local filter bank. Especially, DHiF is sensitive to HFCs, owing to the dynamic parameters of its generated filters being symmetrically adjusted within a zero-centered range according to Fourier…
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