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Depthwise Separable Convolutions and Variational Dropout within the context of YOLOv3

机译:在Yolov3的背景下深度可分离的卷曲和变分差异

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Deep learning algorithms have demonstrated remarkable performance in many sectors and have become one of the main foundations of modern computer-vision solutions. However, these algorithms often impose prohibitive levels of memory and computational overhead, especially in resource-constrained environments. In this study, we combine the state-of-the-art object-detection model YOLOv3 with depthwise separable convolutions and variational dropout in an attempt to bridge the gap between the superior accuracy of convolutional neural networks and the limited access to computational resources. We propose three lightweight variants of YOLOv3 by replacing the original network's standard convolutions with depthwise separable convolutions at different strategic locations within the network, and we evaluate their impacts on YOLOv3's size, speed, and accuracy. We also explore variational dropout: a technique that finds individual and unbounded dropout rates foreach neural network weight. Experiments on the PASCAL VOC benchmark dataset show promising results where variational dropout combined with the most efficient YOLOv3 variant lead to an extremely sparse solution that reduces 95% of the baseline network's parameters at a relatively small drop of 3% in accuracy.
机译:深度学习算法在许多部门中表现出显着的性能,并已成为现代计算机视觉解决方案的主要基础之一。然而,这些算法通常会强加令人禁止的存储器和计算开销,尤其是在资源受限环境中。在这项研究中,我们将最先进的对象检测模型Yolov3与深度可分离的卷曲和变分差,以试图弥合卷积神经网络的卓越精度与对计算资源的有限访问之间的差距。我们通过在网络内的不同战略位置的深度可分离卷积中替换原始网络的标准卷积,提出了三种轻量级的YOLOV 5变体,我们评估了对Yolov3的尺寸,速度和准确性的影响。我们还探索变分辍学:一种找到个人和无界辍学率的技术,用于构建神经网络重量。 Pascal VOC基准数据集的实验显示了有希望的结果,其中变分辍学与最有效的YOLOV3变体相结合,导致极其稀疏的解决方案,可在精度的相对较小的3%下减少95%的基线网络的参数。

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