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Hybrid bi-dimensional empirical mode decomposition based enhancement technique for extreme low contrast UAV thermal images

机译:基于混合二维经验模式分解的增强技术,用于超低对比度无人机热图像

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The performance of automatic target detection and classification systems are typically affected by reduced contrast quality introduced by external interferences. In particular for Unmanned Aerial Vehicle (UAV) captured thermal surveillance images, the effect is more evident. This advises the use of contrast enhancementtechnique as a solution to enhance the reduced contrast of hot regions for efficient target detection. In this paper, a simple and novel enhancement technique based on singular value decomposition (SVD) using Bi-Dimensional Empirical Mode Decomposition (BEMD) is proposed to enhance the hot regions in extreme low contrast thermal images captured by UAV. In the first step, the technique decomposes the thermal image into Intrinsic Mode Functions (IMFs) and residue by using BEMD. In the second step, it applies Contrast Limited AdaptiveHistogram Equalization (CLAHE) in the residue for local contrast enhancement and then calculates the singular value matrix. In the third step, residue component is rescaled for further improvement of hot regions using scaling factor. In the fourth step, a detail enhanced IMF components are generated using gray scale transformation. Finally, the contrast enhanced residue undergoes Inverse BEMD (IBEMD) together with the detailed enhanced IMFs for enhanced image generation. Experimental results demonstrate that the proposed techniqueeffectively enhances the contrast and details in the image with less visual artefacts than other state-of-the-art techniques.
机译:自动目标检测和分类系统的性能通常受外部干扰导致对比度降低的影响。特别是对于无人机(UAV)捕获的热监视图像,效果更加明显。这建议使用对比度增强技术作为解决方案,以增强热区域的对比度降低,以进行有效的目标检测。本文提出了一种基于奇异值分解(SVD),使用二维经验模态分解(BEMD)的简单新颖的增强技术,以增强无人机捕获的极低对比度热图像中的热点区域。第一步,该技术通过使用BEMD将热图像分解为固有模式函数(IMF)和残差。第二步,它在残差中应用对比度受限的自适应直方图均衡化(CLAHE)进行局部对比度增强,然后计算奇异值矩阵。在第三步中,使用比例因子重新调整残渣成分,以进一步改善高温区域。在第四步中,使用灰度转换生成详细增强的IMF组件。最后,对比度增强的残基连同详细的增强IMF一起经历反BEMD(IBEMD),以增强图像生成。实验结果表明,与其他最新技术相比,所提出的技术以较少的视觉伪像有效地增强了图像的对比度和细节。

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