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RESIDUAL INCEPTION: A NEW MODULE COMBINING MODIFIED RESIDUAL WITH INCEPTION TO IMPROVE NETWORK PERFORMANCE

机译:剩余成立:一个新模块,组合修改的残差与成立以提高网络性能

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Residuals and inception are two commonly used module that makes the network deeper and wider to achieve better performance. And the combination of these two modules which is usually referred to as inception-resnet can get a better result. In this paper, we propose a new type of combination to give full play to the role of residuals and inception, making network learning more abundant features. The new proposed module is called Residual Inception (RI) which enjoys the same width as the inception module in GoogLeNet. In RI, each parallel cascade structure is replaced by a densely block or a modified residual block for gaining a better performance and a lower computational cost. Finally, we evaluate our proposed network on three highly competitive datasets and the results demonstrate its superiority in comparison with the state-of-the-art.
机译:Residuals和Inception是两个常用的模块,使网络更深入地更宽,以实现更好的性能。并且这两个模块通常被称为Incepion-Reset的组合可以获得更好的结果。在本文中,我们提出了一种新型组合,充分发挥残差和成立的作用,使网络学习更丰富的功能。新的建议模块称为残差成立(RI),其欣赏与Googlenet中的初始模块相同的宽度。在RI中,每个平行级联结构被密集的块或修改的残余块代替,以获得更好的性能和较低的计算成本。最后,我们在三个高竞争力的数据集中评估我们所提出的网络,结果与最先进的相比,结果表明其优势。

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