Saved in:
Bibliographic Details
Main Authors: Zhao, Jianwei, Li, Xin, Yang, Fan, Zhai, Qiang, Luo, Ao, Jiao, Zicheng, Cheng, Hong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.13133
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916329241444352
author Zhao, Jianwei
Li, Xin
Yang, Fan
Zhai, Qiang
Luo, Ao
Jiao, Zicheng
Cheng, Hong
author_facet Zhao, Jianwei
Li, Xin
Yang, Fan
Zhai, Qiang
Luo, Ao
Jiao, Zicheng
Cheng, Hong
contents Detecting objects seamlessly blended into their surroundings represents a complex task for both human cognitive capabilities and advanced artificial intelligence algorithms. Currently, the majority of methodologies for detecting camouflaged objects mainly focus on utilizing discriminative models with various unique designs. However, it has been observed that generative models, such as Stable Diffusion, possess stronger capabilities for understanding various objects in complex environments; Yet their potential for the cognition and detection of camouflaged objects has not been extensively explored. In this study, we present a novel denoising diffusion model, namely FocusDiffuser, to investigate how generative models can enhance the detection and interpretation of camouflaged objects. We believe that the secret to spotting camouflaged objects lies in catching the subtle nuances in details. Consequently, our FocusDiffuser innovatively integrates specialized enhancements, notably the Boundary-Driven LookUp (BDLU) module and Cyclic Positioning (CP) module, to elevate standard diffusion models, significantly boosting the detail-oriented analytical capabilities. Our experiments demonstrate that FocusDiffuser, from a generative perspective, effectively addresses the challenge of camouflaged object detection, surpassing leading models on benchmarks like CAMO, COD10K and NC4K.
format Preprint
id arxiv_https___arxiv_org_abs_2407_13133
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FocusDiffuser: Perceiving Local Disparities for Camouflaged Object Detection
Zhao, Jianwei
Li, Xin
Yang, Fan
Zhai, Qiang
Luo, Ao
Jiao, Zicheng
Cheng, Hong
Computer Vision and Pattern Recognition
Detecting objects seamlessly blended into their surroundings represents a complex task for both human cognitive capabilities and advanced artificial intelligence algorithms. Currently, the majority of methodologies for detecting camouflaged objects mainly focus on utilizing discriminative models with various unique designs. However, it has been observed that generative models, such as Stable Diffusion, possess stronger capabilities for understanding various objects in complex environments; Yet their potential for the cognition and detection of camouflaged objects has not been extensively explored. In this study, we present a novel denoising diffusion model, namely FocusDiffuser, to investigate how generative models can enhance the detection and interpretation of camouflaged objects. We believe that the secret to spotting camouflaged objects lies in catching the subtle nuances in details. Consequently, our FocusDiffuser innovatively integrates specialized enhancements, notably the Boundary-Driven LookUp (BDLU) module and Cyclic Positioning (CP) module, to elevate standard diffusion models, significantly boosting the detail-oriented analytical capabilities. Our experiments demonstrate that FocusDiffuser, from a generative perspective, effectively addresses the challenge of camouflaged object detection, surpassing leading models on benchmarks like CAMO, COD10K and NC4K.
title FocusDiffuser: Perceiving Local Disparities for Camouflaged Object Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.13133