Calibrating Uncertainties in Object Localization Task
Buu Phan, Rick Salay, Krzysztof Czarnecki, Vahdat Abdelzad, Taylor Denouden, Sachin Vernekar
- 发表年份
- 2018
- 访问权限
- 开放获取
摘要
In many safety-critical applications such as autonomous driving and surgical robots, it is desirable to obtain prediction uncertainties from object detection modules to help support safe decision-making. Specifically, such modules need to estimate the probability of each predicted object in a given region and the confidence interval for its bounding box. While recent Bayesian deep learning methods provide a principled way to estimate this uncertainty, the estimates for the bounding boxes obtained using these methods are uncalibrated. In this paper, we address this problem for the single-object localization task by adapting an existing technique for calibrating regression models. We show, experimentally, that the resulting calibrated model obtains more reliable uncertainty estimates.
关键词
相关论文
机器人技术在整形外科中的应用
Vijay Kumar, Sandhya Pandey
Clinical Journal of Plastic & Reconstructive Surgery · 2026
SurfSurg6D:面向无纹理手术器械的几何一致密集对应位姿估计
Daiyun Shen, Shuojue Yang, Chang Han Low 等 7 位作者
2026
EndoGSim:基于MLLM引导的高斯泼溅的物理感知4D动态内窥镜场景模拟
Changjing Liu, Yiming Huang, Long Bai 等 5 位作者
2026
首次报道使用ANSUR进行胃局部切除术的病例
Sato R, Sagawa H, Hayashi S 等 13 位作者
Asian journal of endoscopic surgery · 2026