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Deep Learning-Based Thermal Image Reconstruction and Object Detection

机译:基于深度学习的热图像重建和物体检测

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Recently, thermal cameras are being widely used in various fields, such as intelligent surveillance, biometrics, and health monitoring. However, the high cost of the thermal cameras poses a challenge in terms of purchase. Additionally, thermal images have an issue pertaining to blurring caused by object movement, camera movement, and camera focus settings. There have been very few studies on image restoration centered around thermal images to address such problems. Moreover, it is important to increase the processing speed of image restoration methods to jointly conduct with methods such as action recognition and object tracking that use temporal information from thermal videos. However, no study has been conducted on simultaneously performing super-resolution reconstruction and deblurring using thermal images. Furthermore, existing studies on object detection using thermal images have errors owing to the incapability in distinguishing reflections on the surrounding ground or wall due to the heat radiated from the object. To address such issues, this study proposes a deep learning-based thermal image restoration method that simultaneously performs super-resolution reconstruction and deblurring. According to recent development of deep learning, generative adversarial network (GAN)-based methods which have ability to preserve texture details in images, and yield sharper and more plausible textures than classical feed forward encoders show success in image-to-image translation tasks. Considering the advantages of GAN, we propose a deblur-SRRGAN for thermal image reconstruction. In addition, we propose a light-weighted Mask R-CNN for object detection in the reconstructed thermal image. For the input, we employ an image processing method that converts 1-channel thermal images (often used in the existing studies) into 3-channel images. The results of the experiments conducted using self-collected databases and an open database demonstrate that our method outperforms the state-of-the-art methods.
机译:最近,热摄像机广泛用于各种领域,例如智能监测,生物识别技术和健康监测。然而,热摄像头的高成本在购买方面提出了挑战。此外,热图像具有由物体运动,相机运动和相机对焦设置引起的模糊有关的问题。围绕热图像恢复的图像恢复几乎没有研究以解决这些问题。此外,重要的是提高图像恢复方法的处理速度,以共同传导,诸如使用来自热视频的时间信息的动作识别和对象跟踪的方法。然而,没有使用热图像同时进行超分辨率重建和去掩盖的研究。此外,由于在由从物体辐射的热量的热量区分在周围地面或壁的反射时,使用热图像的对象检测的现有研究具有错误。为了解决这些问题,本研究提出了一种基于深度学习的热图像恢复方法,同时执行超分辨率重建和去束性。根据深度学习的最近发展,生成的对抗网络(GAN)的基于方法,其能够在图像到图像到图像转换任务中显示成功的图像到图像到图像转换任务中的纹理细节,以及产生的纹理细节,以及产量锐利和更合理的纹理。考虑到GaN的优点,我们提出了一种用于热图像重建的DeBlur-SRRGAN。另外,我们提出了一种用于对象检测的光加权掩模R-CNN在重建的热图像中。对于输入,我们采用图像处理方法将1通道热图像(通常在现有研究中使用)转换为3通道图像。使用自收集数据库和开放数据库进行的实验结果表明我们的方法优于最先进的方法。

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