Loading [MathJax]/extensions/MathMenu.js
Small-Object Sensitive Segmentation Using Across Feature Map Attention | IEEE Journals & Magazine | IEEE Xplore

Small-Object Sensitive Segmentation Using Across Feature Map Attention


Abstract:

Semantic segmentation is an important step in understanding the scene for many practical applications such as autonomous driving. Although Deep Convolutional Neural Netwo...Show More

Abstract:

Semantic segmentation is an important step in understanding the scene for many practical applications such as autonomous driving. Although Deep Convolutional Neural Networks-based methods have significantly improved segmentation accuracy, small/thin objects remain challenging to segment due to convolutional and pooling operations that result in information loss, especially for small objects. This article presents a novel attention-based method called Across Feature Map Attention (AFMA) to address this challenge. It quantifies the inner-relationship between small and large objects belonging to the same category by utilizing the different feature levels of the original image. The AFMA could compensate for the loss of high-level feature information of small objects and improve the small/thin object segmentation. Our method can be used as an efficient plug-in for a wide range of existing architectures and produces much more interpretable feature representation than former studies. Extensive experiments on eight widely used segmentation methods and other existing small-object segmentation models on CamVid and Cityscapes demonstrate that our method substantially and consistently improves the segmentation of small/thin objects.
Page(s): 6289 - 6306
Date of Publication: 30 September 2022

ISSN Information:

PubMed ID: 36178991

Funding Agency:


Contact IEEE to Subscribe

References

References is not available for this document.