Single-frame infrared small target (SIRST) detection aims at separating small targets from clutter backgrounds. With the advances of deep learning, CNN-based methods have yielded promising results in generic object detection due to their powerful modeling capability. However, existing CNN-based methods cannot be directly applied for infrared small targets since pooling layers in their networks could lead to the loss of targets in deep layers. To handle this problem, we propose a dense nested attention network (DNANet) in this paper. Specifically, we design a dense nested interactive module (DNIM) to achieve progressive interaction among high-level and low-level features. With the repeated interaction in DNIM, infrared small targets in deep layers can be maintained. Based on DNIM, we further propose a cascaded channel and spatial attention module (CSAM) to adaptively enhance multi-level features. With our DNANet, contextual information of small targets can be well incorporated and fully exploited by repeated fusion and enhancement. Moreover, we develop an infrared small target dataset (namely, NUDT-SIRST) and propose a set of evaluation metrics to conduct comprehensive performance evaluation. Experiments on both public and our self-developed datasets demonstrate the effectiveness of our method. Compared to other state-of-the-art methods, our method achieves better performance in terms of probability of detection (Pd), false-alarm rate (Fa), and intersection of union (IoU).
翻译:单一红外线小目标(SIRST)的检测旨在将小目标与模糊的背景区分开来。随着深层次学习的进步,CNN使用的方法在普通物体探测方面取得了令人乐观的成果,因为它们具有强大的建模能力。但是,现有的CNN使用的方法不能直接适用于红红外小目标,因为其网络中的集合层可能导致目标在深层中丢失。为了处理这一问题,我们提议在本文件中建立一个密集的嵌巢式关注网络(DNANet)。具体地说,我们设计了一个密集的嵌巢式互动模块(DNIM),以实现高层次和低层次特征之间的渐进互动。随着DNIMU的反复互动,红外小目标在深层层层中可以保持。基于DNIM,我们进一步提议一个累进化的频道和空间关注模块(CSAAM),以适应性地加强多层次特征。由于我们的DNA网络,小目标的背景资料可以很好地被整合和充分利用。此外,我们开发了一个红外小目标数据集(即NUDTT-SIRST),并提议一套评价指标,用以进行全面的业绩评估。我们公共和自我探测方法的相互比较。