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Image Reduction Using Assorted Dimensionality Reduction Techniques

机译:使用什锦维度减少技术进行图像减少

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Dimensionality reduction is the mapping of data from a high dimensional space to a lower dimension space such that the result obtained by analyzing the reduced dataset is a good approximation to the result obtained by analyzing the original data set. There are several dimensionality reduction approaches which include Random Projections, Principal Component Analysis, the Variance approach, LSA-Transform, the Combined and Direct approaches, and the New Random Approach. In this paper, we propose three new techniques, each of which will be a modified version of the last three techniques mentioned above (the Combined and Direct approaches, and the New Random Approach). We shall implement each of the ten reduction techniques mentioned, after which we shall use these techniques to compress various pictures. Finally, we shall compare the ten reduction techniques implemented in this paper with each other by the extent to which they preserve images.
机译:维数减少是从高尺寸空间到更低尺寸空间的数据映射,使得通过分析还原数据集获得的结果是通过分析原始数据集而获得的结果的良好近似。 有几种维度降低方法包括随机投影,主成分分析,方差方法,LSA转换,组合和直接方法以及新的随机方法。 在本文中,我们提出了三种新技术,每个技术将是上述最后三种技术的修改版本(组合和直接方法,以及新的随机方法)。 我们将实现所提到的每种减少技术,之后我们将使用这些技术来压缩各种图片。 最后,我们将通过它们保护图像的程度比较本文实施的十种减少技术。

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