Expose Camouflage in the Water: Underwater Camouflaged Instance Segmentation and Dataset
- URL: http://arxiv.org/abs/2510.17585v1
- Date: Mon, 20 Oct 2025 14:34:51 GMT
- Title: Expose Camouflage in the Water: Underwater Camouflaged Instance Segmentation and Dataset
- Authors: Chuhong Wang, Hua Li, Chongyi Li, Huazhong Liu, Xiongxin Tang, Sam Kwong,
- Abstract summary: camouflaged instance segmentation (CIS) faces greater challenges in accurately segmenting objects that blend closely with their surroundings.<n>Traditional camouflaged instance segmentation methods, trained on terrestrial-dominated datasets with limited underwater samples, may exhibit inadequate performance in underwater scenes.<n>We introduce the first underwater camouflaged instance segmentation dataset, UCIS4K, which comprises 3,953 images of camouflaged marine organisms with instance-level annotations.
- Score: 76.92197418745822
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the development of underwater exploration and marine protection, underwater vision tasks are widespread. Due to the degraded underwater environment, characterized by color distortion, low contrast, and blurring, camouflaged instance segmentation (CIS) faces greater challenges in accurately segmenting objects that blend closely with their surroundings. Traditional camouflaged instance segmentation methods, trained on terrestrial-dominated datasets with limited underwater samples, may exhibit inadequate performance in underwater scenes. To address these issues, we introduce the first underwater camouflaged instance segmentation (UCIS) dataset, abbreviated as UCIS4K, which comprises 3,953 images of camouflaged marine organisms with instance-level annotations. In addition, we propose an Underwater Camouflaged Instance Segmentation network based on Segment Anything Model (UCIS-SAM). Our UCIS-SAM includes three key modules. First, the Channel Balance Optimization Module (CBOM) enhances channel characteristics to improve underwater feature learning, effectively addressing the model's limited understanding of underwater environments. Second, the Frequency Domain True Integration Module (FDTIM) is proposed to emphasize intrinsic object features and reduce interference from camouflage patterns, enhancing the segmentation performance of camouflaged objects blending with their surroundings. Finally, the Multi-scale Feature Frequency Aggregation Module (MFFAM) is designed to strengthen the boundaries of low-contrast camouflaged instances across multiple frequency bands, improving the model's ability to achieve more precise segmentation of camouflaged objects. Extensive experiments on the proposed UCIS4K and public benchmarks show that our UCIS-SAM outperforms state-of-the-art approaches.
Related papers
- Exploring the Underwater World Segmentation without Extra Training [55.291219073365546]
We introduce textbfAquaOV255, the first large-scale and fine-grained underwater segmentation dataset.<n>We also present textbfEarth2Ocean, a training-free OV segmentation framework.
arXiv Detail & Related papers (2025-11-11T07:22:56Z) - MARIS: Marine Open-Vocabulary Instance Segmentation with Geometric Enhancement and Semantic Alignment [56.88334234553316]
We introduce textbfMARIS (underlineMarine Open-Vocabulary underlineInstance underlineSegmentation), the first large-scale fine-grained benchmark for underwater Open-Vocabulary (OV) segmentation.<n>Our framework consistently outperforms existing OV baselines both In-Domain and Cross-Domain setting.
arXiv Detail & Related papers (2025-10-17T07:50:58Z) - Advancing Marine Research: UWSAM Framework and UIIS10K Dataset for Precise Underwater Instance Segmentation [110.02397462607449]
We propose a large-scale underwater instance segmentation dataset, UIIS10K, which includes 10,048 images with pixel-level annotations for 10 categories.<n>We then introduce UWSAM, an efficient model designed for automatic and accurate segmentation of underwater instances.<n>We show that our model is effective, achieving significant performance improvements over state-of-the-art methods on multiple underwater instance datasets.
arXiv Detail & Related papers (2025-05-21T14:36:01Z) - Improving underwater semantic segmentation with underwater image quality attention and muti-scale aggregation attention [13.73105543582749]
UnderWater SegFormer (UWSegFormer) is a transformer-based framework for semantic segmentation of low-quality underwater images.<n>The proposed method has advantages in terms of segmentation completeness, boundary clarity, and subjective perceptual details when compared to SOTA methods.
arXiv Detail & Related papers (2025-03-30T12:47:56Z) - MV-Adapter: Enhancing Underwater Instance Segmentation via Adaptive Channel Attention [0.0]
MarineVision Adapter (MV-Adapter) is an adaptive channel attention mechanism that enables the model to adjust the feature weights of each channel.
By adaptively weighting features, the model can effectively handle challenges such as light attenuation, color shifts, and complex backgrounds.
Experimental results show that integrating the MV-Adapter module into the USIS-SAM network architecture further improves the model's overall performance.
arXiv Detail & Related papers (2024-11-01T09:38:04Z) - Underwater Camouflaged Object Tracking Meets Vision-Language SAM2 [60.47622353256502]
We propose the first large-scale multi-modal underwater camouflaged object tracking dataset, namely UW-COT220.<n>Based on the proposed dataset, this work first evaluates current advanced visual object tracking methods, including SAM- and SAM2-based trackers, in challenging underwater environments.<n>Our findings highlight the improvements of SAM2 over SAM, demonstrating its enhanced ability to handle the complexities of underwater camouflaged objects.
arXiv Detail & Related papers (2024-09-25T13:10:03Z) - Diving into Underwater: Segment Anything Model Guided Underwater Salient Instance Segmentation and A Large-scale Dataset [60.14089302022989]
Underwater vision tasks often suffer from low segmentation accuracy due to the complex underwater circumstances.
We construct the first large-scale underwater salient instance segmentation dataset (USIS10K)
We propose an Underwater Salient Instance architecture based on Segment Anything Model (USIS-SAM) specifically for the underwater domain.
arXiv Detail & Related papers (2024-06-10T06:17:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.