Self-Supervised Likelihood Estimation with Energy Guidance for Anomaly
Segmentation in Urban Scenes
- URL: http://arxiv.org/abs/2302.06815v3
- Date: Sat, 6 Jan 2024 07:04:35 GMT
- Title: Self-Supervised Likelihood Estimation with Energy Guidance for Anomaly
Segmentation in Urban Scenes
- Authors: Yuanpeng Tu, Yuxi Li, Boshen Zhang, Liang Liu, Jiangning Zhang, Yabiao
Wang, Cai Rong Zhao
- Abstract summary: We design an energy-guided self-supervised framework for anomaly segmentation.
We exploit the strong context-dependent nature of the segmentation task.
Based on the proposed estimators, we devise an adaptive self-supervised training framework.
- Score: 42.66864386405585
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Robust autonomous driving requires agents to accurately identify unexpected
areas (anomalies) in urban scenes. To this end, some critical issues remain
open: how to design advisable metric to measure anomalies, and how to properly
generate training samples of anomaly data? Classical effort in anomaly
detection usually resorts to pixel-wise uncertainty or sample synthesis, which
ignores the contextual information and sometimes requires auxiliary data with
fine-grained annotations. On the contrary, in this paper, we exploit the strong
context-dependent nature of the segmentation task and design an energy-guided
self-supervised framework for anomaly segmentation, which optimizes an anomaly
head by maximizing the likelihood of self-generated anomaly pixels. For this
purpose, we design two estimators to model anomaly likelihood, one is a
task-agnostic binary estimator and the other depicts the likelihood as residual
of task-oriented joint energy. Based on the proposed estimators, we devise an
adaptive self-supervised training framework, which exploits the contextual
reliance and estimated likelihood to refine mask annotations in anomaly areas.
We conduct extensive experiments on challenging Fishyscapes and Road Anomaly
benchmarks, demonstrating that without any auxiliary data or synthetic models,
our method can still achieve comparable performance to supervised competitors.
Code is available at https://github.com/yuanpengtu/SLEEG..
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