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contributor authorRui Wang
contributor authorTengkun Yang
contributor authorCi Liang
contributor authorMengying Wang
contributor authorYusheng Ci
date accessioned2025-04-20T10:00:11Z
date available2025-04-20T10:00:11Z
date copyright12/18/2024 12:00:00 AM
date issued2025
identifier otherJTEPBS.TEENG-8660.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4303815
description abstractDespite the impressive achievements of computer vision technologies such as semantic segmentation, their applications in safety-critical areas, such as autonomous driving, present substantial challenges, particularly in ensuring the safety of the intended functionality (SOTIF). It is well-recognized that the lack of confidence estimation or overconfidence in a model prediction hinders model applicability and dependability in critical sectors. Profiting from the expressive modeling ability of Dempster–Shafer theory for uncertain information, we propose EviSeg as an approach of uncertainty estimation for semantic segmentation models, which is grounded in the evidential classifier framework. Specifically, we first transform the fully convolutional neural networks used for semantic segmentation via pixelwise classification into an evidential model. Subsequently, the outputs of the penultimate convolutional layer and parameters of the final convolutional layer of a conventionally trained semantic segmentation model constitute a raw evidence pool. Reasoning from this evidence pool, we quantify the predictive uncertainties with the metric conflict. The proposed method does not affect model performance because it does not necessitate alterations to the model architecture and training objective. We utilize the CamVid urban road scene data set and Nighttime Driving data set for our experimental analysis. These experiments demonstrated that, in comparison with the baseline methods, our proposed approach not only provides competitive performance but also enhances computational efficiency significantly. Our study directly contributes to improving the safety and reliability of connected and automated vehicles (CAVs). Such a contribution is crucial to reduce the accidents of CAVs caused by environment perception issues and improving the SOTIF of CAVs.
publisherAmerican Society of Civil Engineers
titleReliable Autonomous Driving Environment Perception: Uncertainty Quantification of Semantic Segmentation
typeJournal Article
journal volume151
journal issue3
journal titleJournal of Transportation Engineering, Part A: Systems
identifier doi10.1061/JTEPBS.TEENG-8660
journal fristpage04024117-1
journal lastpage04024117-10
page10
treeJournal of Transportation Engineering, Part A: Systems:;2025:;Volume ( 151 ):;issue: 003
contenttypeFulltext


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