Spotting camouflaged objects that are visually assimilated into the background is tricky for both object detection algorithms and humans who are usually confused or cheated by the perfectly intrinsic similarities between the foreground objects and the background surroundings. To tackle this challenge, we aim to extract the high-resolution texture details to avoid the detail degradation that causes blurred vision in edges and boundaries. We introduce a novel HitNet to refine the low-resolution representations by high-resolution features in an iterative feedback manner, essentially a global loop-based connection among the multi-scale resolutions. In addition, an iterative feedback loss is proposed to impose more constraints on each feedback connection. Extensive experiments on four challenging datasets demonstrate that our \ourmodel~breaks the performance bottleneck and achieves significant improvements compared with 29 state-of-the-art methods. To address the data scarcity in camouflaged scenarios, we provide an application example by employing cross-domain learning to extract the features that can reflect the camouflaged object properties and embed the features into salient objects, thereby generating more camouflaged training samples from the diverse salient object datasets The code will be available at https://github.com/HUuxiaobin/HitNet.
翻译:在背景中被视觉同化的隐形隐蔽物体对物体探测算法和通常被表面物体和背景周围完全内在相似之处混淆或欺骗的人类来说都是困难的。 为了应对这一挑战,我们力求提取高分辨率纹理细节,以避免在边缘和边界造成模糊视力的详细降解。我们推出一个新颖的HitNet,以迭代反馈方式通过高分辨率特征改进低分辨率表示方式,基本上在多尺度分辨率之间建立一种全球环状连接。此外,还提议迭代反馈损失,以便对每个反馈连接施加更多的限制。关于四个具有挑战性的数据集的广泛实验表明,我们的“我们的模型”打破了性能瓶颈,并取得了与29种最先进的方法相比的重大改进。为了解决迷惑情景中的数据稀缺问题,我们提供了一个应用范例,即利用跨多面学习来提取能够反映迷彩对象特性的特征,并将特征嵌入突出的物体中,从而从不同的显性对象数据集中产生更多的迷彩训练样本。 将在 http://giphinux/Hirobux.