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Small target detection in infrared image using convolutional neural networks

机译:使用卷积神经网络的红外图像小目标检测

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Infrared small target detection is an important research topic in the field of infrared image processing and has a major impact on applications in areas such as remote sensing, infrared imaging precise. Due to atmospheric scattering, refraction and the effect of the lens, the infrared detector to receive the target information very weak, it's difficult to detect the small target in complex background. In this paper, a novel small target detection method in a single infrared image is proposed based on deep convolutional neural network that is mainly using to extract the features of target, through the method can obtain more discriminative features of infrared.image. Firstly, the off-line training of convolution kernel parameters using open data sets and simulated data sets, the result of preliminary training gives an initial convolution kernel, this step can reduce the time required for parameter training. Secondly, the input infrared image is preliminarily processed by the trained parameters to obtain the primary features of the infrared image, through the processing of the convolution kernel, a large number of feature information in different scales of the input image are obtained. Finally, selecting and merging the features, design the efficient characteristic information selection strategy, then fine-tune the convolution parameters with the result information, by merging the feature graph can realize the output of the result target image. The experimental results demonstrated that compared with existing classical methods, the proposed method could greatly improve the quality of the results, more importantly, our method can directly achieve the end-to-end mapping between the input images and target detection results.
机译:红外小目标检测是红外图像处理领域的重要研究课题,对遥感,精确红外成像等领域的应用产生重大影响。由于大气散射,折射和透镜的作用,红外探测器接收目标信息的能力很弱,很难在复杂背景下探测到小的目标。本文提出了一种基于深度卷积神经网络的单红外图像小目标检测新方法,该方法主要用于提取目标特征,通过该方法可以获得更多的红外图像判别特征。首先,使用开放数据集和模拟数据集对卷积核参数进行离线训练,初步训练的结果给出了初始的卷积核,这一步骤可以减少参数训练所需的时间。其次,通过训练后的参数对输入的红外图像进行初步处理,得到红外图像的主要特征,通过卷积核的处理,得到了输入图像不同比例的大量特征信息。最后,对特征进行选择和合并,设计有效的特征信息选择策略,然后对结果信息进行微调,通过合并特征图可以实现结果目标图像的输出。实验结果表明,与现有经典方法相比,该方法可以大大提高结果的质量,更重要的是,该方法可以直接实现输入图像与目标检测结果之间的端到端映射。

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