Attention mechanism of late has been quite popular in the computer vision community. A lot of work has been done to improve the performance of the network, although almost always it results in increased computational complexity. In this paper, we propose a new attention module that not only achieves the best performance but also has lesser parameters compared to most existing models. Our attention module can easily be integrated with other convolutional neural networks because of its lightweight nature. The proposed network named Dual Multi Scale Attention Network (DMSANet) is comprised of two parts: the first part is used to extract features at various scales and aggregate them, the second part uses spatial and channel attention modules in parallel to adaptively integrate local features with their global dependencies. We benchmark our network performance for Image Classification on ImageNet dataset, Object Detection and Instance Segmentation both on MS COCO dataset.
翻译:最近的关注机制在计算机视觉界相当受欢迎。 已经做了许多工作来改善网络的功能,尽管几乎总是导致计算复杂性的增加。 在本文件中,我们提议一个新的关注模块,该模块不仅能够取得最佳的性能,而且与大多数现有模型相比,其参数也较小。 我们的关注模块由于其轻重性质,很容易与其他进化神经网络融合。 拟议的名为“双层多层关注网络”的网络由两部分组成:第一部分用于提取不同规模的特征并汇总这些特征,第二部分使用空间和引导关注模块,同时适应性地将地方特征与全球依赖性相结合。 我们将图像网络的图像分类功能以图像网络数据集、目标探测和事件区分为基准,两者都以MS COCO数据集为基准。