Calibrated confidence estimates obtained from neural networks are crucial, particularly for safety-critical applications such as autonomous driving or medical image diagnosis. However, although the task of confidence calibration has been investigated on classification problems, thorough investigations on object detection and segmentation problems are still missing. Therefore, we focus on the investigation of confidence calibration for object detection and segmentation models in this chapter. We introduce the concept of multivariate confidence calibration that is an extension of well-known calibration methods to the task of object detection and segmentation. This allows for an extended confidence calibration that is also aware of additional features such as bounding box/pixel position, shape information, etc. Furthermore, we extend the expected calibration error (ECE) to measure miscalibration of object detection and segmentation models. We examine several network architectures on MS COCO as well as on Cityscapes and show that especially object detection as well as instance segmentation models are intrinsically miscalibrated given the introduced definition of calibration. Using our proposed calibration methods, we have been able to improve calibration so that it also has a positive impact on the quality of segmentation masks as well.
翻译:从神经网络获得的校准信任估计至关重要,特别是对于自主驾驶或医学图像诊断等安全关键应用而言。然而,尽管对保密校准任务进行了分类问题调查,但对物体探测和分解问题仍缺乏彻底调查。因此,我们在本章中侧重于对物体探测和分解模型的可信度校准调查。我们引入了多变量信任校准概念,将众所周知的校准方法扩展至物体探测和分解任务。这样可以扩大信任校准范围,同时了解装箱/像素位置、形状信息等附加特征。此外,我们扩展预期校准错误(ECE),以测量物体探测和分解模型的校准误差。我们研究了MS COCO以及城市景的若干网络结构,并表明,由于引入校准定义,特别是物体探测和实例分解模型存在内在的误差。我们提议的校准方法,我们得以改进校准,从而也能够对分解面罩的质量产生积极影响。