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Scale invariant feature extraction for identifying an object in the image using Moment invariants

机译:Scale不变特征提取用于使用时刻不变性识别图像中的对象

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Feature extraction is the first and foremost activity in object recognition and detection processing. It reduces the amount of data by representing the image in the form of distinctive, representative interest points. This paper deals with the extraction of global features from the pre-processed images. Geometric Moment invariant produces a set of seven normalized moment invariants that are invariant under shifting, scaling and rotation. Geometric Moment invariant is widely used to extract global features for pattern recognition due to its discrimination power and robustness. After the feature extraction is done the dimensionality of the feature is reduced using the concept of Principal Component Analysis. Finally, the reduced feature vector is used for the recognition of object using the Nearest Neighbor.
机译:特征提取是物体识别和检测处理中的第一和最重要的活动。它通过以独特的代表性兴趣点的形式代表图像来减少数据量。本文涉及从预处理图像提取全局功能。几何时刻不变生成一组七个正常化的时刻不变性,这些时刻不变,在转换,缩放和旋转下。几何时刻不变广泛用于提取由于其辨别力和鲁棒性而有用于模式识别的全局特征。在完成特征提取之后,使用主成分分析的概念来减少特征的维度。最后,减少的特征向量用于使用最近邻居识别对象。

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