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A Novel Method Of Target Recognition Based On 3-D-color-space Locally Adaptive Regression Kernels Model

机译:基于3-D颜色空间局部自适应回归核模型的目标识别新方法

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Locally adaptive regression kernels model can describe the edge shape of images accurately and graphic trend of images integrally, but it did not consider images' color information while the color is an important element of an image. Therefore, we present a novel method of target recognition based on 3-D-color-space locally adaptive regression kernels model. Different from the general additional color information, this method directly calculate the local similarity features of 3-D data from the color image. The proposed method uses a few examples of an object as a query to detect generic objects with incompact, complex and changeable shapes. Our method involves three phases: First, calculating the novel color-space descriptors from the RGB color space of query image which measure the likeness of a voxel to its surroundings. Salient features which include spatial- dimensional and color -dimensional information are extracted from said descriptors, and simplifing them to construct a non-similar local structure feature set of the object class by principal components analysis (PCA). Second, we compare the salient features with analogous features from the target image. This comparison is done using a matrix generalization of the cosine similarity measure. Then the similar structures in the target image are obtained using local similarity structure statistical matching. Finally, we use the method of non-maxima suppression in the similarity image to extract the object position and mark the object in the test image. Experimental results demonstrate that our approach is effective and accurate in improving the ability to identify targets.
机译:局部自适应回归核模型可以准确地描述图像的边缘形状和图像的图形趋势,但是当颜色是图像的重要元素时,它没有考虑图像的颜色信息。因此,我们提出了一种基于3-D颜色空间局部自适应回归核模型的目标识别新方法。与一般的其他颜色信息不同,此方法直接从彩色图像中计算3D数据的局部相似性特征。所提出的方法使用对象的一些示例作为查询来检测形状不紧凑,复杂和可变的通用对象。我们的方法涉及三个阶段:首先,从查询图像的RGB颜色空间中计算新颖的颜色空间描述符,以测量体素与其周围环境的相似度。从所述描述符中提取包括空间维和颜色维信息的显着特征,并通过主成分分析(PCA)将它们简化以构造对象类别的非相似局部结构特征集。其次,我们将显着特征与目标图像中的相似特征进行比较。使用余弦相似性度量的矩阵概括来完成此比较。然后使用局部相似性结构统计匹配获得目标图像中的相似结构。最后,我们在相似图像中使用非极大值抑制方法来提取目标位置并在测试图像中标记目标。实验结果表明,我们的方法在提高识别目标的能力方面是有效而准确的。

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