基于颜色通道归一化图像的压缩色度直方图的光照不变颜色目标识别

M. S. Drew, Jie Wei, Ze-Nian Li
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引用次数: 103

摘要

几种基于图像检索算法的彩色物体识别方法试图忽略光照的变化,以便在测试图像光照条件与创建图像数据库时获得的光照条件不同时提高性能。在这里,我们扩展了Swain和Ballard的开创性方法来贴现变化的照明。该方法基于最简单的颜色索引方法的第一阶段,利用彩色图像和边缘图像通道之间的角度不变量。该方法首先对图像通道进行归一化,然后有效地丢弃大部分剩余信息。这里我们采用颜色归一化阶段作为适当的颜色常数步骤。此外,我们用2D色度直方图代替3D颜色直方图。将这些图像作为图像处理,我们使用小波压缩和离散余弦变换(DCT)的组合在压缩直方图图像域实现该方法,以充分利用低通滤波技术来提高效率。结果非常令人鼓舞,其性能大大优于所测试的其他方法。该方法也很快,因为索引过程完全在压缩域中进行,并且只使用36或72个值的特征向量。
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Illumination-invariant color object recognition via compressed chromaticity histograms of color-channel-normalized images
Several color object recognition methods that are based on image retrieval algorithms attempt to discount changes of illumination in order to increase performance when test image illumination conditions differ from those that obtained when the image database was created. Here we extend the seminal method of Swain and Ballard to discount changing illumination. The new method is based on the first stage of the simplest color indexing method, which uses angular invariants between color image and edge image channels. That method first normalizes image channels, and then effectively discards much of the remaining information. Here we adopt the color-normalization stage as an adequate color constancy step. Further, we replace 3D color histograms by 2D chromaticity histograms. Treating these as images, we implement the method in a compressed histogram-image domain using a combination of wavelet compression and Discrete Cosine Transform (DCT) to fully exploit the technique of low-pass filtering for efficiency. Results are very encouraging, with substantially better performance than other methods tested. The method is also fast, in that the indexing process is entirely carried out in the compressed domain and uses a feature vector of only 36 or 72 values.
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