提升卷积神经网络训练速度的有效方法

P. Pabitha, Anusha Jayasimhan
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引用次数: 0

摘要

深度神经网络擅长图像识别和计算机视觉应用,如视觉产品搜索、面部识别、医学图像分析、物体检测、语义分割、实例分割等。在图像和视频识别应用中,卷积神经网络(CNN)被广泛采用。这些网络能提供更好的性能,但计算成本较高。随着大数据时代的到来,数据集的规模不断扩大,使得处理和模型训练成为一项耗时的工作,从而导致训练时间延长。此外,这些大规模数据集包含的冗余数据点对模型最终结果的影响微乎其微。为了解决这些问题,我们提出了一种加速 CNN 系统,通过在训练过程中消除非关键数据点和模型压缩方法来加快训练速度。此外,还通过汇总两级粒度的数据点来识别关键输入数据,这些数据点用于评估对模型输出的影响。我们在 CIFAR-10 数据集的 ResNet 模型上使用所提出的方法进行了大量实验,结果表明 FLOPs 的数量减少了 40%,而准确率仅降低了 0.11%。
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An efficient approach to escalate the speed of training convolution neural networks
Deep neural networks excel at image identification and computer vision applications such as visual product search, facial recognition, medical image analysis, object detection, semantic segmentation, instance segmentation, and many others. In image and video recognition applications, convolutional neural networks (CNNs) are widely employed. These networks provide better performance but at a higher cost of computation. With the advent of big data, the growing scale of datasets has made processing and model training a time-consuming operation, resulting in longer training times. Moreover, these large scale datasets contain redundant data points that have minimum impact on the final outcome of the model. To address these issues, an accelerated CNN system is proposed for speeding up training by eliminating the noncritical data points during training alongwith a model compression method. Furthermore, the identification of the critical input data is performed by aggregating the data points at two levels of granularity which are used for evaluating the impact on the model output. Extensive experiments are conducted using the proposed method on CIFAR-10 dataset on ResNet models giving a 40% reduction in number of FLOPs with a degradation of just 0.11% accuracy.
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