Sign In

Communications of the ACM

ACM TechNews

Data Processing Module Makes Deep Neural Networks Smarter


View as: Print Mobile App Share: Send by email Share on reddit Share on StumbleUpon Share on Hacker News Share on Tweeter Share on Facebook

Researchers at North Carolina State University have improved the performance of deep neural networks by combining feature normalization and feature attention modules into a single module that improves the accuracy of the system significantly, while using negligible extra computational power.

Credit: Alina Grubnyak

Artificial intelligence researchers at North Carolina State University (NC State) have enhanced deep neural network performance by integrating feature normalization and feature attention modules into a hybrid attentive normalization (AN) module.

This module improves system accuracy, while consuming negligible additional computation power.

The team tested the AN module by plugging it into four popular neural network architectures: ResNets, DenseNets, MobileNetsV2, and AOGNets.

Testing these networks against the ImageNet-1000 classification and the MS-COCO 2017 object detection and instance segmentation benchmarks demonstrated improved performance.

NC State's Tianfu Wu said, "We have released the source code and hope our AN will lead to better integrative design of deep neural networks."

From NC State News
View Full Article

 


 

No entries found

Sign In for Full Access
» Forgot Password? » Create an ACM Web Account