HS-FPN: High Frequency and Spatial Perception FPN for Tiny Object Detection
The introduction of Feature Pyramid Network (FPN) has significantly improved object detection performance. However, substantial challenges remain in detecting tiny objects, as their features occupy only a very small proportion of the feature maps. Although FPN integrates multi-scale features, it doe...
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Zusammenfassung: | The introduction of Feature Pyramid Network (FPN) has significantly improved
object detection performance. However, substantial challenges remain in
detecting tiny objects, as their features occupy only a very small proportion
of the feature maps. Although FPN integrates multi-scale features, it does not
directly enhance or enrich the features of tiny objects. Furthermore, FPN lacks
spatial perception ability. To address these issues, we propose a novel High
Frequency and Spatial Perception Feature Pyramid Network (HS-FPN) with two
innovative modules. First, we designed a high frequency perception module (HFP)
that generates high frequency responses through high pass filters. These high
frequency responses are used as mask weights from both spatial and channel
perspectives to enrich and highlight the features of tiny objects in the
original feature maps. Second, we developed a spatial dependency perception
module (SDP) to capture the spatial dependencies that FPN lacks. Our
experiments demonstrate that detectors based on HS-FPN exhibit competitive
advantages over state-of-the-art models on the AI-TOD dataset for tiny object
detection. |
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DOI: | 10.48550/arxiv.2412.10116 |