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Sar image classification method based on sar-sift and dbn

A classification method and image technology, applied in character and pattern recognition, instruments, computing, etc., can solve the problems of losing important details, reducing the average accuracy of multiple classification runs, and reducing information, achieving accurate image classification results and improving classification. The effect of improving efficiency and classification speed

Active Publication Date: 2018-11-30
XIDIAN UNIV
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Problems solved by technology

However, the disadvantage of this method is that it is required to learn a dictionary for each type of training data and obtain a synthetic dictionary, and it depends on the dynamic integration selection of each atom in the synthetic dictionary, which leads to the training time of the classification method. Long, computationally complex, and not robust, reducing the average accuracy of multiple classification runs
This method uses the data information of the image, the correlation information between the image and the relevant information of the image on multiple scales, and extracts important information from a small amount of weak information, that is, learns SAR from the training data marked with keywords. The image classification model can greatly reduce the difficulty of obtaining accurate training data, and overcome some local uncertainties in SAR image classification, but the disadvantage of this method is that multiple correlations between images at the same time In the process of information processing, the information between data is cut too fast, and a small amount of weak information used for training loses many important details, resulting in low accuracy and insufficient robustness of the classification method.

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  • Sar image classification method based on sar-sift and dbn
  • Sar image classification method based on sar-sift and dbn
  • Sar image classification method based on sar-sift and dbn

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Embodiment Construction

[0040] Attached below figure 1 The steps of the present invention are further described in detail.

[0041] Step 1. Input integer type SAR image matrix.

[0042] Step 2. Transform the SAR image matrix:

[0043] Convert the integer int type matrix of the input integer type SAR image matrix into a double precision double type matrix.

[0044] Step 3. Extract SAR-SIFT features, the specific steps are as follows:

[0045] The first step is to select a circular window with a radius of 16 pixels and a moving step of 2 pixels to slide in the double-precision double-type SAR image matrix to obtain the area of ​​the double-precision double-type SAR image matrix.

[0046] The second step is to extract SAR-SIFT local features in the area of ​​the double-precision double-type SAR image matrix to obtain a 128*2209-dimensional SAR-SIFT feature matrix, where the dimension of each local feature in the SAR-SIFT local feature matrix It is 128 dimensions, and the number of local features in ...

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Abstract

The invention discloses a SAR image classification method based on SAR‑SIFT and DBN, which mainly solves the problem of synthetic aperture radar image classification. The classification process is: (1) input integer type SAR image matrix; (2) convert SAR image matrix; (3) extract SAR-SIFT features; (4) maximum pooling processing; (5) normalization; (6) Train four restricted Boltzmann machines RBM; (7) train softmax classifier; (8) build deep belief network DBN network; (9) classify; (10) calculate classification accuracy. The invention extracts the SAR-SIFT feature of the synthetic aperture radar image, adopts the deep belief network DBN, learns the feature layer by layer, retains the information integrity of the radar image, excavates the depth information, has a good classification effect, and can be used for SAR Image classification.

Description

technical field [0001] The present invention belongs to the technical field of image processing, and further relates to a synthetic aperture radar-based scale invariant feature transform (Synthetic Aperture Radar-Scale invariant feature transform, SAR-SIFT) and deep belief network (Deep Brief Network) in the technical field of image classification , DBN) synthetic aperture radar (Synthetic Aperture Radar, SAR) image classification method. The invention can be applied to target classification and recognition of SAR images. Background technique [0002] Synthetic Aperture Radar (SAR) can work around the clock and around the clock, and the image resolution it obtains is comparable to that of optical images. The classification of SAR images is a key branch in the field of synthetic aperture radar imaging. When using SAR images to classify ground objects, feature extraction and selection are crucial. Typical features in SAR images include peaks, textures, regions, edges, inten...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62G06K9/46
CPCG06V10/462G06F18/2411
Inventor 焦李成屈嵘王雅依张丹马文萍马晶晶尚荣华赵进赵佳琦侯彪杨淑媛
Owner XIDIAN UNIV
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