Temporal Performance Prediction for Deep Convolutional Long Short-Term Memory Networks

Fieback, Laura, Dash, Bidya, Spiegelberg, Jakob, Gottschalk, Hanno
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Abstract

Quantifying predictive uncertainty of deep semantic segmentation networks is essential in safety-critical tasks. In applications like autonomous driving, where video data is available, convolutional long short-term memory networks are capable of not only providing semantic segmentations but also predicting the segmentations of the next timesteps. These models use cell states to broadcast information from previous data by taking a time series of inputs to predict one or even further steps into the future. We present a temporal postprocessing method which estimates the prediction performance of convolutional long short-term memory networks by either predicting the intersection over union of predicted and ground truth segments or classifying between intersection over union being equal to zero or greater than zero. To this end, we create temporal cell state-based input metrics per segment and investigate different models for the estimation of the predictive quality based on these metrics. We further study the influence of the number of considered cell states for the proposed metrics.
深度卷积长短期记忆网络的时间性能预测
量化深度语义分割网络的预测不确定性在安全关键任务中至关重要。在自动驾驶等视频数据可用的应用中,卷积长短期记忆网络不仅能够提供语义分割,还能够预测下一个时间步长的分割。这些模型使用单元状态,通过输入时间序列来预测未来的一步甚至一步,从而从以前的数据中传播信息。我们提出了一种时间后处理方法,通过预测预测段和真实段的交集并集或交集并集等于零或大于零之间的分类来估计卷积长短期记忆网络的预测性能。为此,我们为每个片段创建基于时间单元状态的输入指标,并研究基于这些指标的预测质量估计的不同模型。我们进一步研究了考虑的细胞状态的数量对所提出的度量的影响。
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