Raman spectroscopy method of measuring melamine contents in dairy products having different matrixes
    1.
    发明授权
    Raman spectroscopy method of measuring melamine contents in dairy products having different matrixes 有权
    测量具有不同基质的乳制品中三聚氰胺含量的拉曼光谱法

    公开(公告)号:US08891081B1

    公开(公告)日:2014-11-18

    申请号:US14145454

    申请日:2013-12-31

    IPC分类号: G01J3/44 G01N21/65

    CPC分类号: G01N21/65

    摘要: A raman spectroscopy method of measuring melamine contents in dairy products having different matrixes. The method includes: (a) establishing a database of characteristic curves of dairy products having different matrixes; (b) taking several copies of the dairy products having one certain unknown matrix and adding melamine standard solutions having different concentrations therein, to obtain a series of dairy product samples in which the relative concentrations of the melamine are known; (c) performing raman spectrum testing analysis and obtaining corresponding characteristic peak intensities to obtain a slope of the characteristic curve showing variation of the characteristic peak intensities with the relative concentrations of the melamine; (d) searching the database of step (a) using the slope of the characteristic curve of the dairy product samples to find a matching characteristic curve, and (e) calculating concentration of melamine in the dairy products by using the matched characteristic curve and the characteristic peak intensity.

    摘要翻译: 测量具有不同基质的乳制品中三聚氰胺含量的拉曼光谱法。 该方法包括:(a)建立具有不同矩阵的乳制品特征曲线数据库; (b)取几份具有一定未知基质的乳制品,并加入其中浓度不同的三聚氰胺标准溶液,以获得其中已知三聚氰胺的相对浓度的一系列乳制品样品; (c)进行拉曼光谱测试分析并获得相应的特征峰强度,以获得特征曲线的斜率,显示特征峰强度与三聚氰胺的相对浓度的变化; (d)使用乳制品样品的特征曲线的斜率来搜索步骤(a)的数据库,以找到匹配的特征曲线,以及(e)通过使用匹配的特征曲线计算乳制品中三聚氰胺的浓度, 特征峰强度。

    Method and system for estimating point spread function

    公开(公告)号:US10152774B2

    公开(公告)日:2018-12-11

    申请号:US15217613

    申请日:2016-07-22

    摘要: The present disclosure relates to a method and device for estimating a point spread function. In one implementation, a method includes capturing, by a scanning device, an image by scanning a plurality of rectangle blocks which are same sized and closely arranged, wherein the plurality of rectangle blocks are made of different materials and/or have different mass thicknesses, and an incident direction of rays is perpendicular to a scanning direction and a surface of the plurality of rectangle blocks arranged closely during scanning; obtaining line spread functions for two directions along a length side and a width side of each of the rectangle blocks based on the scanned image, and obtaining standard deviation parameters of the line spread functions; and combining the standard deviation parameters for the two directions to obtain a two dimensional Point Spread Function (PSF) parameter so as to estimate the point spread function.

    METHODS AND APPARATUSES FOR ESTIMATING AN AMBIGUITY OF AN IMAGE

    公开(公告)号:US20180040115A1

    公开(公告)日:2018-02-08

    申请号:US15610930

    申请日:2017-06-01

    IPC分类号: G06T7/00

    摘要: A method and an apparatus for estimating an image fuzziness are provided. The method may comprise: acquiring an image; obtaining a mufti-scale representation of the image by performing a mufti-scale transform on the image; calculating gradients of the image and a normalized histogram of the gradients at each scale based on the multi-scale representation; calculating error vectors between the normalized histogram of gradients at each scale and a normalized original histogram of gradients of the image; performing a weighted summing on the error vectors by using respective weights to obtain a summed result, wherein the weights are determined based on a reciprocal of the sums of squares of the gradients of the image at each scale; estimating the ambiguity of the image based on the summed result.

    Methods and apparatuses for estimating an ambiguity of an image

    公开(公告)号:US10332244B2

    公开(公告)日:2019-06-25

    申请号:US15610930

    申请日:2017-06-01

    IPC分类号: G06T7/00

    摘要: A method and an apparatus for estimating an image fuzziness are provided. The method may comprise: acquiring an image; obtaining a multi-scale representation of the image by performing a multi-scale transform on the image; calculating gradients of the image and a normalized histogram of the gradients at each scale based on the multi-scale representation; calculating error vectors between the normalized histogram of gradients at each scale and a normalized original histogram of gradients of the image; performing a weighted summing on the error vectors by using respective weights to obtain a summed result, wherein the weights are determined based on a reciprocal of the sums of squares of the gradients of the image at each scale; estimating the ambiguity of the image based on the summed result.

    Raman spectroscopic detection method

    公开(公告)号:US10267678B2

    公开(公告)日:2019-04-23

    申请号:US14577748

    申请日:2014-12-19

    摘要: Embodiments of the present invention provide a Raman spectroscopic inspection method, comprising the steps of: measuring a Raman spectrum of an object to be inspected successively to collect a plurality of Raman spectroscopic signals; superposing the plurality of Raman spectroscopic signals to form a superposition signal; filtering out a florescence interfering signal from the superposition signal; and identifying the object to be inspected on basis of the superposition signal from which the florescence interfering signal has been filtered out. By means of the above method, a desired Raman spectroscopic signal may be acquired by removing the interference caused by a florescence signal from a Raman spectroscopic inspection signal of the object. It may inspect correctly the characteristics of the Raman spectrum of the object so as to identify the object effectively.

    Imaging system and method of evaluating an image quality for the imaging system

    公开(公告)号:US10217204B2

    公开(公告)日:2019-02-26

    申请号:US15409738

    申请日:2017-01-19

    摘要: A method of evaluating an image quality for an imaging system and the imaging system are provided. The method in some examples includes: acquiring an image to be evaluated which is generated by the imaging system; extracting a number of sub-images from the image; obtaining a coefficient vector indicating a degree of sparsity by applying a sparse decomposition on the sub-images based on a pre-set redundant sparse representation dictionary; and performing a linear transformation on the coefficient vector so as to obtain an evaluation value for the image quality. The sparse dictionary is learned by only using a few high quality perspective images, and then the image quality is evaluated based on the sparse degree of the image obtained by using the sparse dictionary. A convenient and rapid no-reference image quality evaluation is achieved.