Standard Convolutional Neural Network (CNN) designs rarely focus on the importance of explicitly capturing diverse features to enhance the network's performance. Instead, most existing methods follow an indirect approach of increasing or tuning the networks' depth and width, which in many cases significantly increases the computational cost. Inspired by a biological visual system, we propose a Diverse and Adaptive Attention Convolutional Network (DA$^{2}$-Net), which enables any feed-forward CNNs to explicitly capture diverse features and adaptively select and emphasize the most informative features to efficiently boost the network's performance. DA$^{2}$-Net incurs negligible computational overhead and it is designed to be easily integrated with any CNN architecture. We extensively evaluated DA$^{2}$-Net on benchmark datasets, including CIFAR100, SVHN, and ImageNet, with various CNN architectures. The experimental results show DA$^{2}$-Net provides a significant performance improvement with very minimal computational overhead.
翻译:标准革命神经网络(CNN)的设计很少注重明确捕捉不同功能以提高网络性能的重要性,相反,大多数现有方法都采用间接方法增加或调整网络深度和广度,在许多情况下,这大大增加了计算成本。在生物视觉系统的启发下,我们提议建立一个多样化和适应性关注革命网络(DA$2美元-Net),使任何前向型CNN能够明确捕捉不同特征,适应性地选择,强调高效提高网络性能的最丰富功能。DA$2美元-Net产生微不足道的计算间接费用,设计它容易与任何CNN结构整合。我们广泛评价基准数据集的DA$2美元-Net,包括CIFAR100、SVHN和图像网络,有CNN的各种结构。实验结果显示DA$2美元-Net以极小的计算间接费用大大改进了业绩。