论文标题
放大进出:用于伪装对象检测的混合尺度三重网络
Zoom In and Out: A Mixed-scale Triplet Network for Camouflaged Object Detection
论文作者
论文摘要
最近提出的伪装对象检测(COD)尝试将视觉上混合到周围环境中的对象进行分割,这在实际情况下非常复杂且困难。除了伪装的物体及其背景之间的高内在相似性外,这些物体通常规模多样,外观模糊,甚至严重遮住。为了解决这些问题,我们提出了一个混合规模的三重态网络,\ textbf {Zoomnet},该网络在观察模糊的图像时模仿了人类的行为,即放大进出。具体而言,我们的Zoomnet采用了Zoom策略来学习设计的量表集成单元和分层混合规模单元的判别混合规模语义,这充分探索了候选对象和背景环境之间的不可察觉的线索。此外,考虑到无法区分的纹理产生的不确定性和歧义性,我们构建了一个简单而有效的正规化约束,不确定性感知的损失,以促进该模型,以准确地产生对候选区域信心更高的预测。没有铃铛和口哨,我们提出的高度任务友好模型始终超过了四个公共数据集上现有的23种最新方法。此外,与最近的SOD任务的最新尖端模型相比,卓越的性能还验证了我们模型的有效性和一般性。该代码将在\ url {https://github.com/lartpang/zoomnet}上提供。
The recently proposed camouflaged object detection (COD) attempts to segment objects that are visually blended into their surroundings, which is extremely complex and difficult in real-world scenarios. Apart from high intrinsic similarity between the camouflaged objects and their background, the objects are usually diverse in scale, fuzzy in appearance, and even severely occluded. To deal with these problems, we propose a mixed-scale triplet network, \textbf{ZoomNet}, which mimics the behavior of humans when observing vague images, i.e., zooming in and out. Specifically, our ZoomNet employs the zoom strategy to learn the discriminative mixed-scale semantics by the designed scale integration unit and hierarchical mixed-scale unit, which fully explores imperceptible clues between the candidate objects and background surroundings. Moreover, considering the uncertainty and ambiguity derived from indistinguishable textures, we construct a simple yet effective regularization constraint, uncertainty-aware loss, to promote the model to accurately produce predictions with higher confidence in candidate regions. Without bells and whistles, our proposed highly task-friendly model consistently surpasses the existing 23 state-of-the-art methods on four public datasets. Besides, the superior performance over the recent cutting-edge models on the SOD task also verifies the effectiveness and generality of our model. The code will be available at \url{https://github.com/lartpang/ZoomNet}.