部署过程中目标检测连续性能监控的逐帧mAP预测

Q. Rahman, N. Sunderhauf, Feras Dayoub
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引用次数: 10

摘要

物体检测的性能监控对于安全关键型应用至关重要,例如在变化和复杂的环境条件下运行的自动驾驶汽车。目前,对象检测器使用基于单个数据集的汇总指标进行评估,该数据集被认为代表了所有未来的部署条件。在实践中,这种假设并不成立,性能会随着部署条件的变化而波动。为了解决这个问题,我们提出了一种内省方法来在部署期间进行性能监控,而不需要地面真实数据。我们通过使用检测器的内部特征来预测何时每帧平均精度降至临界阈值以下。我们定量地评估并演示了我们的方法通过提高警报和缺席检测来权衡做出错误决策来降低风险的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Per-frame mAP Prediction for Continuous Performance Monitoring of Object Detection During Deployment
Performance monitoring of object detection is crucial for safety-critical applications such as autonomous vehicles that operate under varying and complex environmental conditions. Currently, object detectors are evaluated using summary metrics based on a single dataset that is assumed to be representative of all future deployment conditions. In practice, this assumption does not hold, and the performance fluctuates as a function of the deployment conditions. To address this issue, we propose an introspection approach to performance monitoring during deployment without the need for ground truth data. We do so by predicting when the per-frame mean average precision drops below a critical threshold using the detector’s internal features. We quantitatively evaluate and demonstrate our method’s ability to reduce risk by trading off making an incorrect decision by raising the alarm and absenting from detection.
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