项目名称: 恶劣气候环境下的图像复原技术研究
项目编号: No.61501147
项目类型: 青年科学基金项目
立项/批准年度: 2016
项目学科: 无线电电子学、电信技术
项目作者: 李骜
作者单位: 哈尔滨理工大学
项目金额: 19万元
中文摘要: 在获取户外图像时,视觉系统的抗气候环境干扰能力是高质量成像的重要影响因素之一,其成像质量也决定了图像识别与理解等高层处理任务的效果。针对东北地区的气候特点,本课题重点探究雨、雪两种气候环境下的图像复原问题。其具体研究内容拟在以下几个方面展开:首先,研究一种适当的滤波方法将观测图像分解为高频细节图像及低频平滑图像;其次,将图像中的场景纹理与环境干扰作为图像的多重形态分量源,建立针对雨雪图像细节分量的盲源分离模型,并受形态分量分析方法的启发,研究该模型下基于相关性编码的字典学习问题,提高字典在不同形态分量下的类间鉴别能力。再次,探究分离模型中的混合矩阵估计方法,提高模型中优化目标的解精度及收敛速度。针对低频图像的弱模糊现象,探究基于混合正则化的复原方法,发挥多种先验信息的联合约束作用,进一步提高复原质量。最后,将场景纹理与低频分量合成,获得雨雪气候环境下的高质量复原图像。
中文关键词: 恶劣气候;图像复原;盲源分离;字典学习;混合正则化
英文摘要: When the visual system capture the outdoor image, its ability on anti-environment interference is the one of the most important factor to obtain high quality image, which also decided the results of many high level tasks, such as image recognition and image understanding. Considering the climate in northeast, our project addresses the image restoration within rain or snow. We focus on the following several aspects. Firstly, we study the appropriate filtering method to decompose the observation to smooth and detail part. Secondly, we take the scene textures and environment interference as the morphological components and establish the corresponding blind source separation model. Motivated by the morphological component analysis, we also address the dictionary learning based on relevance coding, which can promote the discrimination between the different components. And then, the mixing matrix estimation is also studied to gain the good performance on solutions and convergence. Meanwhile, as to the weak blurring and noise in smooth part, a novel approach based on hybrid regularizations is proposed, which can develop incorporating constraints within multiple priors. At last, we can obtain the high quality latent image by compositing the texture and smooth components.
英文关键词: adverse climate;image restoration;blind source separation;dictionary learning;hybird reularizations