A Classification Method of Spectral Tensor Dimensionality Reduction Based on Multilinear ICA

A classification method and tensor-based technology, applied in the field of remote sensing image processing, to achieve the effect of improving classification accuracy and stabilizing results

Active Publication Date: 2020-01-14
NORTHWEST UNIV +2
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

However, this method only simply models the hyperspectral cube as a third-order tensor, without considering the real reason that affects the accuracy of hyperspectral classification: the spectral characteristics of ground objects are affected by various factors such as illumination, mixing, atmospheric scattering, and atmospheric radiation.

Method used

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  • A Classification Method of Spectral Tensor Dimensionality Reduction Based on Multilinear ICA
  • A Classification Method of Spectral Tensor Dimensionality Reduction Based on Multilinear ICA
  • A Classification Method of Spectral Tensor Dimensionality Reduction Based on Multilinear ICA

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Embodiment 1

[0037] This embodiment provides a multi-linear-based spectral tensor dimensionality reduction method, which uses randomly selected pixel spectra as intra-class factors, and constructs intra-class factors, class and pixel spectrum bands as a model respectively. A third-order tensor, which is dimensionally reduced based on multi-linear ICA;

[0038] Step 1. In this embodiment, the pixel spectrum in the hyperspectral image of Indian Pine is selected, and the original image size is 145×145. Such as figure 2 As shown, the hyperspectral image includes 10 types of samples, namely: Corn-notill, Corn-min, Grass / Pasture, Grass / Tree, Hay-windrowed, Soybeans-notill, soybeanans-min, soybeans-clean, Woods, Bldg -Grass Tree; In this embodiment, select 50 pixel spectra from each of the above-mentioned 10 types of samples as an intra-class factor;

[0039] Since the spectral characteristics of ground objects are easily affected by various factors such as illumination, mixing, atmospheric sc...

Embodiment 2

[0043] In this embodiment, the pixel spectrum of the hyperspectral image selected in Embodiment 1 is used as the training set, and any unclassified pixel spectrum in Indian Pine is input as the test pixel spectrum d.

[0044]其中,d为(0.3172,0.4142,0.4506,0.4279,0.4782,0.5048,0.5213,0.5106,0.5053,0.4750,0.4816,0.4769,0.4610,0.4805,0.4828,0.4861,0.4767,0.4624,0.4549,0.4463,0.4462,0.4446,0.4445 ,0.4336,0.4381,0.4319,0.4207,0.4305,0.4311,0.3991,0.4168,0.3942,0.4061,0.4365,0.4318,0.4252,0.4869,0.5284,0.5055,0.3591,0.5175,0.5217,0.5058,0.4969,0.4721,0.4291,0.4555,0.4886 ,0.4868,0.4806,0.4783,0.4811,0.4709,0.3903,0.3795,0.3715,0.3359,0.2130,0.2269,0.2480,0.3145,0.3626,0.4060,0.4296,0.4211,0.4225,0.4157,0.4133,0.4082,0.4048,0.3935,0.3843,0.3784 ,0.3642,0.3271,0.2707,0.1707,0.1564,0.1838,0.1719,0.2229,0.2764,0.2919,0.2873,0.2977,0.2913,0.3034,0.3051,0.3124,0.3101,0.3033,0.2713,0.2740,0.2947,0.2706,0.2834,0.2856,0.2683 ,0.2400,0.2229,0.1822,0.1542,0.1097,0.1029,0.1020,0.1026,0.1009,0.1011...

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Abstract

The invention discloses a classification method of spectral tensor dimensionality reduction based on multi-linear ICA. In the method, factors affecting the spectral characteristics of ground objects are regarded as intra-class factors, and intra-class factors, class and pixel spectra are respectively regarded as a mode Construct a third-order tensor, and perform dimension reduction based on low-rank tensor decomposition; perform multi-linear ICA (independent component analysis) decomposition on the third-order tensor D to obtain a space-like matrix C class , Intraclass factor space matrix C within‑class ; classify the class-free test hyperspectral image d using a supervised classifier. The invention can classify hyperspectral images after the model is established without adjustment, while other tensor modeling methods need to repeatedly set and adjust parameters to achieve the best classification effect; the invention maps all pixel spectra of a class to the same coefficient vector, so that the influence of various factors is minimized, which not only improves the classification accuracy, but also stabilizes the result; when classifying the spectrum of an unknown pixel, it can be deduced which factor it is affected by.

Description

technical field [0001] The invention belongs to the technical field of remote sensing image processing, and in particular relates to a classification method of spectral tensor dimensionality reduction based on multi-linear ICA. Background technique [0002] Hyperspectral images provide a detailed and rich description of the spectral characteristics of ground objects, greatly improving the classification ability of ground objects, and have been widely used in geological exploration and earth resource investigation, urban remote sensing and planning management, environmental and disaster monitoring, precision agriculture, surveying and mapping and archaeology. [0003] However, hyperspectral images are composed of a large number of band data, and these bands constitute a high-dimensional feature space, and its processing requires a huge amount of calculation, causing a "data disaster". To solve this problem, the most effective way is dimensionality reduction. Principal Compo...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62
CPCG06F18/2413G06F18/245
Inventor 彭进业闫荣华汶德胜冯晓毅胡永明王珺
Owner NORTHWEST UNIV
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