State-of-the-art (SOTA) anomaly segmentation approaches on complex urban driving scenes explore pixel-wise classification uncertainty learned from outlier exposure, or external reconstruction models. However, previous uncertainty approaches that directly associate high uncertainty to anomaly may sometimes lead to incorrect anomaly predictions, and external reconstruction models tend to be too inefficient for real-time self-driving embedded systems. In this paper, we propose a new anomaly segmentation method, named pixel-wise energy-biased abstention learning (PEBAL), that explores pixel-wise abstention learning (AL) with a model that learns an adaptive pixel-level anomaly class, and an energy-based model (EBM) that learns inlier pixel distribution. More specifically, PEBAL is based on a non-trivial joint training of EBM and AL, where EBM is trained to output high-energy for anomaly pixels (from outlier exposure) and AL is trained such that these high-energy pixels receive adaptive low penalty for being included to the anomaly class. We extensively evaluate PEBAL against the SOTA and show that it achieves the best performance across four benchmarks. Code is available at https://github.com/tianyu0207/PEBAL.
翻译:在复杂的城市驾驶场景中,“SOTA”异常分解法在复杂的城市驾驶场景中,探索从外部接触或外部重建模型中学到的像素误差分类的不确定性。然而,以前将高度不确定性与异常现象直接联系在一起的不确定性方法有时可能导致不正确的异常预测,外部重建模型往往对实时自我驾驶嵌入系统来说效率太低。在本文件中,我们提出了一个新的异常分解法,名为“像素明智能源偏差学习”(PEBAL),探索像素误差学习(AL),以及学习适应性像素级异常现象的模型和基于能源的模型(EBM),更具体地说,“BEBAL”基于对实时自我驾驶和AL的非三轨联合培训,通过EBM和AL进行高能输出异常像素(来自外部接触),而AL则经过培训,这些高能象素因被列入异常现象类而受到适应性低处罚。我们在SOTA/BA标准中广泛评价“PEALAL”和显示它可在四个基准中达到“MABA/L标准”。