首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >A New Image Representation Algorithm Inspired by Image Submodality Models, Redundancy Reduction, and Learning in Biological Vision
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A New Image Representation Algorithm Inspired by Image Submodality Models, Redundancy Reduction, and Learning in Biological Vision

机译:一种新的图像表示算法,受图像亚模态模型,冗余减少和生物视觉学习启发

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摘要

We develop a new biologically motivated algorithm for representing natural images using successive projections into complementary subspaces. An image is first projected into an edge subspace spanned using an ICA basis adapted to natural images which captures the sharp features of an image like edges and curves. The residual image obtained after extraction of the sharp image features is approximated using a mixture of probabilistic principal component analyzers (MPPCA) model. The model is consistent with cellular, functional, information theoretic, and learning paradigms in visual pathway modeling. We demonstrate the efficiency of our model for representing different attributes of natural images like color and luminance. We compare the performance of our model in terms of quality of representation against commonly used basis, like the discrete cosine transform (DCT), independent component analysis (ICA), and principal components analysis (PCA), based on their entropies. Chrominance and luminance components of images are represented using codes having lower entropy than DCT, ICA, or PCA for similar visual quality. The model attains considerable simplification for learning from images by using a sparse independent code for representing edges and explicitly evaluating probabilities in the residual subspace.
机译:我们开发了一种新的具有生物学动机的算法,用于使用连续投影到互补子空间中来表示自然图像。首先将图像投影到使用适合于自然图像的ICA基础所跨越的边缘子空间中,该自然子图像捕获图像的清晰特征(如边缘和曲线)。提取清晰图像特征后获得的残留图像使用概率主成分分析仪(MPPCA)模型的混合物进行近似。该模型与视觉通路建模中的细胞,功能,信息理论和学习范式一致。我们展示了模型代表自然图像的不同属性(例如颜色和亮度)的效率。我们根据代表的熵,比较模型在代表质量和常用基础上的性能,例如离散余弦变换(DCT),独立分量分析(ICA)和主分量分析(PCA)。对于相似的视觉质量,使用比DCT,ICA或PCA具有更低熵的代码来表示图像的色度和亮度分量。通过使用稀疏的独立代码表示边缘并显式评估残差子空间中的概率,该模型极大地简化了从图像中学习的过程。

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