Yu Jimin, Li Shun, Zhou Shangbo, Wang Hui
College of Automation, Chongqing University of Posts and Telecommunications, Chongqing 400065, China.
College of Computer Science, Chongqing University, Chongqing 400044, China.
Entropy (Basel). 2023 May 17;25(5):808. doi: 10.3390/e25050808.
In order to solve the problems of infrared target detection (i.e., the large models and numerous parameters), a lightweight detection network, MSIA-Net, is proposed. Firstly, a feature extraction module named MSIA, which is based on asymmetric convolution, is proposed, and it can greatly reduce the number of parameters and improve the detection performance by reusing information. In addition, we propose a down-sampling module named DPP to reduce the information loss caused by pooling down-sampling. Finally, we propose a feature fusion structure named LIR-FPN that can shorten the information transmission path and effectively reduce the noise in the process of feature fusion. In order to improve the ability of the network to focus on the target, we introduce coordinate attention (CA) into the LIR-FPN; this integrates the location information of the target into the channel so as to obtain more expressive feature information. Finally, a comparative experiment with other SOTA methods was completed on the FLIR on-board infrared image dataset, which proved the powerful detection performance of MSIA-Net.
为了解决红外目标检测中的问题(即模型大、参数多),提出了一种轻量级检测网络MSIA-Net。首先,提出了一种基于非对称卷积的特征提取模块MSIA,它可以通过重用信息大大减少参数数量并提高检测性能。此外,我们提出了一种名为DPP的下采样模块,以减少池化下采样引起的信息损失。最后,我们提出了一种名为LIR-FPN的特征融合结构,它可以缩短信息传输路径并有效减少特征融合过程中的噪声。为了提高网络关注目标的能力,我们将坐标注意力(CA)引入LIR-FPN;这将目标的位置信息整合到通道中,从而获得更具表现力的特征信息。最后,在FLIR车载红外图像数据集上完成了与其他SOTA方法的对比实验,证明了MSIA-Net强大的检测性能。