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Can We Detect Failures Without Failure Data? Uncertainty-Aware Runtime Failure Detection for Imitation Learning Policies

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Recent years have witnessed impressive robotic manipulation systems driven by advances in imitation learning and generative modeling, such as diffusion- and flow-based approaches. As robot policy performance increases, so does the complexity and time horizon of achievable tasks, inducing unexpected and diverse failure modes that are difficult to predict a priori. To enable trustworthy policy deployment in safety-critical human environments, reliable runtime failure detection becomes important during policy inference. However, most existing failure detection approaches rely on prior knowledge of failure modes and require failure data during training, which imposes a significant challenge in practicality and scalability. In response to these limitations, we present FAIL-Detect, a modular two-stage approach for failure detection in imitation learning-based robotic manipulation. To accurately identify failures from successful training data alone, we frame the problem as sequential out-of-distribution (OOD) detection. We first distill policy inputs and outputs into scalar signals that correlate with policy failures and capture epistemic uncertainty. FAIL-Detect then employs conformal prediction (CP) as a versatile framework for uncertainty quantification with statistical guarantees. Empirically, we thoroughly investigate both learned and post-hoc scalar signal candidates on diverse robotic manipulation tasks. Our experiments show learned signals to be mostly consistently effective, particularly when using our novel flow-based density estimator. Furthermore, our method detects failures more accurately and faster than state-of-the-art (SOTA) failure detection baselines. These results highlight the potential of FAIL-Detect to enhance the safety and reliability of imitation learning-based robotic systems as they progress toward real-world deployment.

Chen Xu, Tony Khuong Nguyen, Emma Dixon, Christopher Rodriguez, Patrick Miller, Robert Lee, Paarth Shah, Rares Ambrus, Haruki Nishimura, Masha Itkina• 2025

Related benchmarks

TaskDatasetResultRank
Failure DetectionLIBERO-10 Seen Tasks
bACC78.6
28
Failure DetectionLIBERO 10 Unseen Tasks
bACC68.1
28
Failure DetectionVLABench (Unseen Tasks)
bACC67.4
12
Failure DetectionVLABench (Seen Tasks)
Balanced Accuracy (bACC)61.8
12
Failure DetectionKITCHEN (Seen)
bACC89.5
8
Failure DetectionBimanual Cable Manipulation (32 folds)
Nominal Accuracy86.8
8
Failure DetectionKitchen Unseen
bACC83.7
8
Failure DetectionCUBE (Seen)
bACC69.9
8
Failure DetectionCUBE (Unseen)
bACC66
8
Anomaly DetectionReal-π soldering
AUROC82.62
5
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