Pixel-level Quality Assessment for Oriented Object Detection
NeutralArtificial Intelligence
The introduction of the Pixel-level Quality Assessment (PQA) framework marks a significant advancement in oriented object detection, addressing limitations inherent in traditional box-level Intersection over Union (IoU) predictions. Existing methods often overestimate localization quality due to structural coupling issues, where the predicted box is derived from the detector's internal estimation of the ground-truth box. PQA mitigates this by evaluating the spatial consistency at the pixel level, thus providing a more accurate measure of alignment between predicted and ground-truth boxes. Experiments conducted on the HRSC2016 dataset demonstrate the potential of PQA to enhance localization accuracy, making it a promising development for applications that demand high precision in object detection.
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