In the field of predictive video coding and format conversion, there is an increasing attention towards estimation of the true inter-frame motion. The restoration of motion vector field computed by 3-D RS is addressed...In the field of predictive video coding and format conversion, there is an increasing attention towards estimation of the true inter-frame motion. The restoration of motion vector field computed by 3-D RS is addressed and a propagating adaptive-weighted vector median (PAWVM) post-filter is proposed. This approach decomposes blocks to make a better estimation on object borders and propagates good vectors in the scanning direction. Furthermore, a hard-thresholding method is introduced into calculating vector weights to improve the propagating. By exploiting both the spatial correlation of the vector field and the matching error of candidate vectors, PAWVM makes a good balance between the smoothness of vector field and the prediction error, and the output vector field is more valid to reflect the true motion.展开更多
针对无法直接获取训练样本的遥感影像分类问题,从满足条件的其他影像中选择替代训练样本是最直接的方法,但由于地物类型在不同影像中的辐射环境不同,导致替代训练样本对待分类影像的代表性较差,无法保证分类精度。以直推式支持向量机(tr...针对无法直接获取训练样本的遥感影像分类问题,从满足条件的其他影像中选择替代训练样本是最直接的方法,但由于地物类型在不同影像中的辐射环境不同,导致替代训练样本对待分类影像的代表性较差,无法保证分类精度。以直推式支持向量机(transductive support vector machine,TSVM)分类为例,发展了一种基于半监督学习的遥感影像训练样本时空拓展方法。该方法采用非监督方法从待分类影像中选择大量未标记样本,挖掘各类地物在特征空间中的结构信息;以替代训练样本所拟合的分类面为初始面,通过自适应渐进式的优化,实现对待分类影像的高精度分类。该方法要求训练样本的来源影像与待分类影像具有相似的地物分布和相近的时相。以SPOT5和QuickBird影像分类为例,分别通过基于像元的和基于分割对象的分类实验证实,该文提出的方法可有效地实现训练样本的时空拓展应用。展开更多
文摘In the field of predictive video coding and format conversion, there is an increasing attention towards estimation of the true inter-frame motion. The restoration of motion vector field computed by 3-D RS is addressed and a propagating adaptive-weighted vector median (PAWVM) post-filter is proposed. This approach decomposes blocks to make a better estimation on object borders and propagates good vectors in the scanning direction. Furthermore, a hard-thresholding method is introduced into calculating vector weights to improve the propagating. By exploiting both the spatial correlation of the vector field and the matching error of candidate vectors, PAWVM makes a good balance between the smoothness of vector field and the prediction error, and the output vector field is more valid to reflect the true motion.
文摘针对无法直接获取训练样本的遥感影像分类问题,从满足条件的其他影像中选择替代训练样本是最直接的方法,但由于地物类型在不同影像中的辐射环境不同,导致替代训练样本对待分类影像的代表性较差,无法保证分类精度。以直推式支持向量机(transductive support vector machine,TSVM)分类为例,发展了一种基于半监督学习的遥感影像训练样本时空拓展方法。该方法采用非监督方法从待分类影像中选择大量未标记样本,挖掘各类地物在特征空间中的结构信息;以替代训练样本所拟合的分类面为初始面,通过自适应渐进式的优化,实现对待分类影像的高精度分类。该方法要求训练样本的来源影像与待分类影像具有相似的地物分布和相近的时相。以SPOT5和QuickBird影像分类为例,分别通过基于像元的和基于分割对象的分类实验证实,该文提出的方法可有效地实现训练样本的时空拓展应用。