Adaptively Connected Neural Networks
Abstract
This paper presents a novel adaptively connected neural network (ACNet) to improve the traditional convolutional neural networks (CNNs) in two aspects. First, ACNet employs a flexible way to switch global and local inference in processing the internal feature representations by adaptively determining the connection status among the feature nodes (e.g., pixels of the feature maps) In a computer vision domain, a node refers to a pixel of a feature map, while in the graph domain, a node denotes a graph node.. We can show that existing CNNs, the classical multilayer perceptron (MLP), and the recently proposed non-local network (NLN) nonlocalnn17 are all special cases of ACNet. Second, ACNet is also capable of handling non-Euclidean data. Extensive experimental analyses on a variety of benchmarks (i.e., ImageNet-1k classification, COCO 2017 detection and segmentation, CUHK03 person re-identification, CIFAR analysis, and Cora document categorization) demonstrate that ACNet cannot only achieve state-of-the-art performance but also overcome the limitation of the conventional MLP and CNN Corresponding author: Liang Lin (linliang@ieee.org). The code is available at https://github.com/wanggrun/Adaptively-Connected-Neural-Networks.
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