DecTrain:决定何时在线训练单目深度深度神经网络

IF 5.3 2区 计算机科学 Q2 ROBOTICS IEEE Robotics and Automation Letters Pub Date : 2025-01-29 DOI:10.1109/LRA.2025.3536206
Zih-Sing Fu;Soumya Sudhakar;Sertac Karaman;Vivienne Sze
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引用次数: 0

摘要

当部署数据与训练数据不一致时,深度神经网络(dnn)的准确性会下降。虽然在所有时间步执行在线训练可以提高准确性,但它在计算上是昂贵的。我们提出了一种新的算法DecTrain,该算法使用低开销的自监督来决定何时在线训练单目深度深度神经网络。为了在每个时间步做出决策,DecTrain将训练成本与预测的精度增益进行比较。我们在非分布数据上评估了DecTrain,发现与在线训练相比,DecTrain在所有时间步长上都保持了准确性,而平均训练时间仅为44%。我们还比较了使用DecTrain的低推理成本深度神经网络和更一般化的高推理成本深度神经网络在各种序列上的恢复情况。DecTrain在所有时间步恢复了在线训练的大部分(97%)准确性增益,同时减少了计算量,而高推理成本的DNN仅恢复了66%。使用更小的深度神经网络,我们实现了89%的恢复,同时减少了56%的计算。DecTrain能够以较低的总体计算成本对较小的深度神经网络进行低成本的在线训练,从而与更大、更通用的深度神经网络具有竞争精度。
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DecTrain: Deciding When to Train a Monocular Depth DNN Online
Deep neural networks (DNNs) can deteriorate in accuracy when deployment data differs from training data. While performing online training at all timesteps can improve accuracy, it is computationally expensive. We propose DecTrain, a new algorithm that decides when to train a monocular depth DNN online using self-supervision with low overhead. To make the decision at each timestep, DecTrain compares the cost of training with the predicted accuracy gain. We evaluate DecTrain on out-of-distribution data, and find DecTrain maintains accuracy compared to online training at all timesteps, while training only 44% of the time on average. We also compare the recovery of a low inference cost DNN using DecTrain and a more generalizable high inference cost DNN on various sequences. DecTrain recovers the majority (97%) of the accuracy gain of online training at all timesteps while reducing computation compared to the high inference cost DNN which recovers only 66%. With an even smaller DNN, we achieve 89% recovery while reducing computation by 56%. DecTrain enables low-cost online training for a smaller DNN to have competitive accuracy with a larger, more generalizable DNN at a lower overall computational cost.
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来源期刊
IEEE Robotics and Automation Letters
IEEE Robotics and Automation Letters Computer Science-Computer Science Applications
CiteScore
9.60
自引率
15.40%
发文量
1428
期刊介绍: The scope of this journal is to publish peer-reviewed articles that provide a timely and concise account of innovative research ideas and application results, reporting significant theoretical findings and application case studies in areas of robotics and automation.
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