SIoU Loss: More Powerful Learning for Bounding Box Regression
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Abstract
The effectiveness of Object Detection, one of the central problems in computer vision tasks, highly depends on the definition of the loss function - a measure of how accurately your ML model can predict the expected outcome. Conventional object detection loss functions depend on aggregation of metrics of bounding box regression such as the distance, overlap area and aspect ratio of the predicted and ground truth boxes (i.e. GIoU, CIoU, ICIoU etc). However, none of the methods proposed and used to date considers the direction of the mismatch between the desired ground box and the predicted, "experimental" box. This shortage results in slower and less effective convergence as the predicted box can "wander…
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Topics
Keywords
- Minimum bounding box
- Ground truth
- Computer science
- Inference
- Bounding overwatch
- Function (biology)
- Regression
- Measure (data warehouse)
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