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Perceptually-based texture and color features for image segmentation and retrieval.

机译:基于感知的纹理和颜色特征,用于图像分割和检索。

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The rapid accumulation of large digital image collections has created the need for efficient and intelligent schemes for image retrieval, and especially Content Based Image Retrieval (CBIR). One of the most important and challenging components of CBIR systems is image segmentation. Since humans are the ultimate users of most CBIR systems, it is important to obtain segmentations that can be used to organize image contents according to categories that are meaningful to humans.; A new approach for color-texture image segmentation is proposed that is based on perceptual models and principles about the processing of texture and color information. First, new adaptive perceptual low-level color and texture features are derived. Then, image segmentation algorithms that combine these features are developed to obtain image segmentations that convey semantic information that can be used for content-based retrieval.; Two types of features are proposed. The first describes the local color composition in terms of spatially adaptive dominant colors, which on one hand, reflect the fact that the human visual system cannot simultaneously perceive a large number of colors, and on the other, the fact that image colors are spatially varying. The second is based on a multi-scale frequency decomposition, which approximates early processing in the human visual system. The local median energy of the subband coefficients is used as a simple but effective characterization of spatial texture. The median filter distinguishes the energy due to region boundaries from the energy of the textures themselves. Even though the estimation of the texture features requires a finite window, which limits spatial resolution, by appropriately combining the texture and color features, the proposed algorithms obtain robust, accurate, and precise segmentations.; The performance of the proposed algorithms is demonstrated in the domain of low resolution and compressed photographic images of natural scenes. Key parameters of the segmentation algorithms are determined by subjective experiments. It is shown that this perceptual tuning leads to significant improvements in performance. Comparisons with existing techniques demonstrate the advantages of the proposed approach.
机译:大型数字图像集合的快速积累,产生了对图像检索,尤其是基于内容的图像检索(CBIR)的高效,智能方案的需求。 CBIR系统最重要和最具挑战性的组件之一是图像分割。由于人类是大多数CBIR系统的最终用户,因此获得可用于根据对人类有意义的类别来组织图像内容的分割很重要。提出了一种新的颜色纹理图像分割方法,该方法基于感知模型和有关纹理和颜色信息处理的原理。首先,得出新的自适应感知低级颜色和纹理特征。然后,开发出结合了这些特征的图像分割算法,以获取传达可用于基于内容的检索的语义信息的图像分割。提出了两种类型的特征。第一种以空间自适应主色来描述局部颜色组成,一方面反映了人类视觉系统无法同时感知大量颜色的事实,另一方面反映了图像颜色在空间上变化的事实。第二个是基于多尺度频率分解的,它近似于人类视觉系统中的早期处理。子带系数的局部中值能量被用作空间纹理的简单但有效的表征。中值滤波器从纹理本身的能量中区分出由于区域边界而产生的能量。即使纹理特征的估计需要有限的窗口,该窗口通过适当地组合纹理和颜色特征来限制空间分辨率,但所提出的算法仍可获得鲁棒,准确和精确的分割。所提出算法的性能在自然场景的低分辨率和压缩摄影图像领域得到了证明。分割算法的关键参数由主观实验确定。结果表明,这种感知调整可以显着提高性能。与现有技术的比较证明了该方法的优点。

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