基于gpu集群的动作识别加速深度神经网络训练

Guojing Cong, Giacomo Domeniconi, Joshua Shapiro, Fan Zhou, Barry Y. Chen
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引用次数: 3

摘要

由于额外的时间维度,大规模视频动作识别甚至比图像识别更具挑战性,即使对于中等规模的数据集,通常也需要几天的时间在现代gpu上进行训练。我们提出了在gpu集群上加速深度神经网络动作识别训练的算法和技术。在收敛性和可扩展性方面,我们的具有自适应批大小的分布式训练算法优于流行的异步随机梯度下降算法。收敛性分析表明,该算法可以在减少通信开销的同时,最大限度地减少收敛所需的迭代次数。我们为分布式算法定制了Adam优化器,以提高效率。此外,我们采用迁移学习进一步减少训练时间,同时提高验证精度。与双流训练方法的基线单gpu随机梯度下降实现相比,我们的实现在16个gpu上实现了超线性加速,同时提高了验证精度。对于ucfi01和HMDB51数据集,验证准确率分别为93.1%和67.9%。据我们所知,这是两流方法所达到的最高精度,不涉及计算昂贵的3D卷积或在更大的数据集上进行预训练。
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Accelerating Deep Neural Network Training for Action Recognition on a Cluster of GPUs
Due to the additional temporal dimension, large-scale video action recognition is even more challenging than image recognition and typically takes days to train on modern GPUs even for modest-sized datasets. We propose algorithms and techniques to accelerate training of deep neural networks for action recognition on a cluster of GPUs. In terms of convergence and scaling, our distributed training algorithm with adaptive batch size is provably superior to popular asynchronous stochastic gradient descent algorithms. The convergence analysis of our algorithm shows it is possible to reduce communication cost and at the same time minimize the number of iterations needed for convergence. We customize the Adam optimizer for our distributed algorithm to improve efficiency. In addition, we employ transfer-learning to further reduce training time while improving validation accuracy. Compared with the base-line single-GPU stochastic gradient descent implementation of the two-stream training approach, our implementation achieves super-linear speedups on 16 GPUs while improving validation accuracy. For the UCFI0l and HMDB51 datasets, the validation accuracies achieved are 93.1 % and 67.9% respectively. As far as we know, these are the highest accuracies achieved with the two-stream approach that does not involve computationally expensive 3D convolutions or pretraining on much larger datasets.
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