Semantic segmentation is an important task that helps autonomous vehicles understand their surroundings and navigate safely. During deployment, even the most mature segmentation models are vulnerable to various external factors that can degrade the segmentation performance with potentially catastrophic consequences for the vehicle and its surroundings. To address this issue, we propose a failure detection framework to identify pixel-level misclassification. We do so by exploiting internal features of the segmentation model and training it simultaneously with a failure detection network. During deployment, the failure detector can flag areas in the image where the segmentation model have failed to segment correctly. We evaluate the proposed approach against state-of-the-art methods and achieve 12.30%, 9.46%, and 9.65% performance improvement in the AUPR-Error metric for Cityscapes, BDD100K, and Mapillary semantic segmentation datasets.
翻译:语义分解是一项重要任务, 有助于自治车辆了解周围环境并安全导航。 部署期间, 甚至最成熟的分解模型也容易受到各种外部因素的影响, 这些外部因素可能会降低分解性能, 给车辆及其周围环境带来潜在的灾难性后果。 为了解决这个问题, 我们提出一个失败检测框架, 以辨别像素级的分解错误。 我们这样做的方法是利用分解模型的内部特征, 并同时训练它与故障检测网络。 在部署期间, 失灵检测器可以在图像中标出分解模型无法正确分解的区域。 我们对照最新方法评估了拟议方法, 并在城市景区、 BDD100K 和 Maply 分解数据集中实现了12:30 % 、 9.46 % 和 9.65%的性能改进。