跳跃式监视
计算机科学
回归
交叉口(航空)
最小边界框
人工智能
边距(机器学习)
算法
数学
统计
机器学习
工程类
图像(数学)
航空航天工程
作者
Jiabo He,Sarah M. Erfani,Xingjun Ma,James E. Bailey,Ying Cheng,Xian-Sheng Hua
摘要
Bounding box (bbox) regression is a fundamental task in computer vision. So far, the most commonly used loss functions for bbox regression are the Intersection over Union (IoU) loss and its variants. In this paper, we generalize existing IoU-based losses to a new family of power IoU losses that have a power IoU term and an additional power regularization term with a single power parameter $\alpha$. We call this new family of losses the $\alpha$-IoU losses and analyze properties such as order preservingness and loss/gradient reweighting. Experiments on multiple object detection benchmarks and models demonstrate that $\alpha$-IoU losses, 1) can surpass existing IoU-based losses by a noticeable performance margin; 2) offer detectors more flexibility in achieving different levels of bbox regression accuracy by modulating $\alpha$; and 3) are more robust to small datasets and noisy bboxes.
科研通智能强力驱动
Strongly Powered by AbleSci AI