Progressive Domain Adaptation with Contrastive Learning for Object
Detection in the Satellite Imagery
- URL: http://arxiv.org/abs/2209.02564v3
- Date: Tue, 31 Oct 2023 04:24:58 GMT
- Title: Progressive Domain Adaptation with Contrastive Learning for Object
Detection in the Satellite Imagery
- Authors: Debojyoti Biswas and Jelena Te\v{s}i\'c
- Abstract summary: State-of-the-art object detection methods largely fail to identify small and dense objects.
We propose a small object detection pipeline that improves the feature extraction process.
We show we can alleviate the degradation of object identification in previously unseen datasets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: State-of-the-art object detection methods applied to satellite and drone
imagery largely fail to identify small and dense objects. One reason is the
high variability of content in the overhead imagery due to the terrestrial
region captured and the high variability of acquisition conditions. Another
reason is that the number and size of objects in aerial imagery are very
different than in the consumer data. In this work, we propose a small object
detection pipeline that improves the feature extraction process by spatial
pyramid pooling, cross-stage partial networks, heatmap-based region proposal
network, and object localization and identification through a novel image
difficulty score that adapts the overall focal loss measure based on the image
difficulty. Next, we propose novel contrastive learning with progressive domain
adaptation to produce domain-invariant features across aerial datasets using
local and global components. We show we can alleviate the degradation of object
identification in previously unseen datasets. We create a first-ever domain
adaptation benchmark using contrastive learning for the object detection task
in highly imbalanced satellite datasets with significant domain gaps and
dominant small objects. The proposed method results in a 7.4% increase in mAP
performance measure over the best state-of-art.
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