CVAIFeb 29, 2024

Theoretically Achieving Continuous Representation of Oriented Bounding Boxes

arXiv:2402.18975v224 citationsh-index: 30Has CodeCVPR
Originality Highly original
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This solves a persistent bottleneck in oriented object detection, enabling more accurate and reliable detection in applications like aerial imagery, though it is an incremental advancement over prior methods.

The paper tackles the problem of discontinuity in oriented bounding box representation for object detection, proposing a novel method called COBB that theoretically ensures continuity and achieves improvements of 1.13% mAP50 and 2.46% mAP75 over a baseline on the DOTA dataset.

Considerable efforts have been devoted to Oriented Object Detection (OOD). However, one lasting issue regarding the discontinuity in Oriented Bounding Box (OBB) representation remains unresolved, which is an inherent bottleneck for extant OOD methods. This paper endeavors to completely solve this issue in a theoretically guaranteed manner and puts an end to the ad-hoc efforts in this direction. Prior studies typically can only address one of the two cases of discontinuity: rotation and aspect ratio, and often inadvertently introduce decoding discontinuity, e.g. Decoding Incompleteness (DI) and Decoding Ambiguity (DA) as discussed in literature. Specifically, we propose a novel representation method called Continuous OBB (COBB), which can be readily integrated into existing detectors e.g. Faster-RCNN as a plugin. It can theoretically ensure continuity in bounding box regression which to our best knowledge, has not been achieved in literature for rectangle-based object representation. For fairness and transparency of experiments, we have developed a modularized benchmark based on the open-source deep learning framework Jittor's detection toolbox JDet for OOD evaluation. On the popular DOTA dataset, by integrating Faster-RCNN as the same baseline model, our new method outperforms the peer method Gliding Vertex by 1.13% mAP50 (relative improvement 1.54%), and 2.46% mAP75 (relative improvement 5.91%), without any tricks.

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