Discriminative context-aware network for camouflaged object detection

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-03-27 DOI:10.3389/frai.2024.1347898
Chidiebere Somadina Ike, Nazeer Muhammad, N. Bibi, Samah Alhazmi, Furey Eoghan
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Abstract

Animals use camouflage (background matching, disruptive coloration, etc.) for protection, confusing predators and making detection difficult. Camouflage Object Detection (COD) tackles this challenge by identifying objects seamlessly blended into their surroundings. Existing COD techniques struggle with hidden objects due to noisy inferences inherent in natural environments. To address this, we propose the Discriminative Context-aware Network (DiCANet) for improved COD performance.DiCANet addresses camouflage challenges through a two-stage approach. First, an adaptive restoration block intelligently learns feature weights, prioritizing informative channels and pixels. This enhances convolutional neural networks’ ability to represent diverse data and handle complex camouflage. Second, a cascaded detection module with an enlarged receptive field refines the object prediction map, achieving clear boundaries without post-processing.Without post-processing, DiCANet achieves state-of-the-art performance on challenging COD datasets (CAMO, CHAMELEON, COD10K) by generating accurate saliency maps with rich contextual details and precise boundaries.DiCANet tackles the challenge of identifying camouflaged objects in noisy environments with its two-stage restoration and cascaded detection approach. This innovative architecture surpasses existing methods in COD tasks, as proven by benchmark dataset experiments.
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用于伪装物体检测的判别式情境感知网络
动物利用伪装(背景匹配、破坏性色彩等)来保护自己,迷惑捕食者,使探测变得困难。伪装物体检测(COD)通过识别与周围环境完美融合的物体来应对这一挑战。由于自然环境中固有的嘈杂推断,现有的伪装物体检测技术在处理隐藏物体时十分困难。为了解决这个问题,我们提出了辨别上下文感知网络(Discriminative Context-aware Network,DiCANet),以提高 COD 性能。DiCANet 通过两个阶段的方法来解决伪装难题。首先,一个自适应还原块智能地学习特征权重,优先考虑信息通道和像素。这增强了卷积神经网络表示不同数据和处理复杂伪装的能力。无需后处理,DiCANet 就能在具有挑战性的 COD 数据集(CAMO、CHAMELEON、COD10K)上生成具有丰富上下文细节和精确边界的精确突出图,从而实现最先进的性能。基准数据集实验证明,这种创新的架构在 COD 任务中超越了现有方法。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
期刊最新文献
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