Local to Global Purification Strategy to Realize Collaborative Camouflaged Object Detection

11 Pages Posted: 19 Apr 2023

See all articles by Jinghui Tong

Jinghui Tong

Northeast Petroleum University

Yaqiu Bi

Northeast Petroleum University

Cong Zhang

Northeast Petroleum University

Hongbo Bi

Northeast Petroleum University

Ye Yuan

Shantou University

Abstract

The purpose of camouflaged object detection is to detect objects in images that are not easily perceived by human eyes. Aiming at the problems of low recognition performance and unsatisfified texture information extraction in the complex environment in the current camouflflaged object detection algorithms, we propose to improve the accuracy by simultaneously detecting a group of images containing the same camouflaged category. Therefore, we put forward a novel method termed local to global purification network(LGPNet) for collaborative camouflaged object detection. Our method comprises two main modules: the Local Detail Mining module(LDM) and the Global Intra-group Feature Extraction module(GIFE). The LDM is designed to exploit diversified detail information via different adaptive kernels and receptive field mechanisms locally, and the GIFE module is invented for feature enhancement and multi-level information aggregation. Specifically, the GIFE first utilizes channel attention and spatial attention mechanisms to enhance high-level semantic information and then aggregates the intra-group characteristics by level. Extensive experiments on CoCOD8K dataset illustrate the effectiveness and superiority of our method compared to SOTAs.

Keywords: Semantic segmentation, co-camouflaged object detection, detail mining, feature extraction.

Suggested Citation

Tong, Jinghui and Bi, Yaqiu and Zhang, Cong and Bi, Hongbo and Yuan, Ye, Local to Global Purification Strategy to Realize Collaborative Camouflaged Object Detection. Available at SSRN: https://ssrn.com/abstract=4423265 or http://dx.doi.org/10.2139/ssrn.4423265

Jinghui Tong

Northeast Petroleum University ( email )

Daqing, 163318
China

Yaqiu Bi

Northeast Petroleum University ( email )

Daqing, 163318
China

Cong Zhang

Northeast Petroleum University ( email )

Daqing, 163318
China

Hongbo Bi (Contact Author)

Northeast Petroleum University ( email )

Daqing, 163318
China

Ye Yuan

Shantou University ( email )

243 Daxue Road
Shantou, Guangdong, 515063
China

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
54
Abstract Views
175
Rank
819,573
PlumX Metrics