Image automatic annotation method and device based on decision tree

A technology of automatic image annotation and decision tree, applied in character and pattern recognition, natural language data processing, special data processing applications, etc., can solve problems such as low correlation, influence, and large number of images

Active Publication Date: 2018-06-19
GUANGDONG KINGPOINT DATA SCI & TECH CO LTD
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  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0003] However, an ideal semantic automatic labeling model requires an ideal training set that can label any image. In order to achieve automatic image labeling as much as possible, the number of images in the training set used is very large, which can be said to be unmeasurable.
In order to obtain more accurate labeling results during the labeling p

Method used

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  • Image automatic annotation method and device based on decision tree
  • Image automatic annotation method and device based on decision tree
  • Image automatic annotation method and device based on decision tree

Examples

Experimental program
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Embodiment 1

[0082] Such as figure 1 As shown, a flow chart of a decision tree-based image automatic labeling method provided by the present invention, the method includes the following steps:

[0083] Step S1: Input image set.

[0084] The input image set includes training images and test images.

[0085] Step S2: Preprocessing the images in the image set.

[0086] Step S3: Use the N-cut algorithm to segment the image, perform visual feature extraction and quantification on the segmented areas, and then calculate the feature similarity according to the quantized feature information, and divide the effective area of ​​the image according to the feature similarity Clustering is performed to form visual lexical units.

[0087] Step S4: Count the keywords and visual lemma information of the training images in the image set, use the posterior probability knowledge to initially label the images, and calculate the labeling probability P of each keyword as the test image label in the image set...

Embodiment 2

[0117] Such as Figure 4 As shown, it is a functional block diagram of a decision tree-based automatic image labeling device provided by the present invention, the device includes: an input unit 1, a preprocessing unit 2, a segmentation extraction unit 3, a labeling probability calculation unit 4, and a spanning tree unit 5 , inter-word correlation calculation unit 6 and selection keyword unit 7.

[0118] Input unit 1 for input image set. The input image set includes training images and test images. The preprocessing unit 2 is configured to preprocess the images in the image set. The segmentation extraction unit 3 is used to segment the image using the N-cut algorithm, and perform visual feature extraction and quantification on the segmented regions respectively, and then calculate feature similarity according to the quantized feature information, and then calculate the feature similarity according to the feature similarity. Valid regions of the image are clustered to form ...

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Abstract

The invention provides an image automatic annotation method and device based on a decision tree. The device comprises an input unit, a pre-processing unit, a segmentation and extraction unit, an annotation probability calculation unit, a spanning tree unit, an inter-word correlation calculation unit and a keyword selection unit. Compared with the prior art, the method of the present invention hasthe advantages that some obtained blurred images are repaired, thus the image semantic automatic annotation technology is applied to a wider scope, the underlying features of the images are more comprehensively extracted, global features and local features are used to reflect the true visual content of the images, the accuracy of image semantics automatic annotation is improved, scale-invariant features of principal component analysis are adopted by the global features, the computational efficiency is improved, especially for high-dimensional images, the unmeasurable nature of massive image sets is solved, an image annotation problem is converted into a classification problem to carry out annotation, and the annotation performance of a traditional model is improved.

Description

technical field [0001] The invention relates to the technical field of image semantic automatic labeling, in particular to a decision tree-based automatic image labeling method and device. Background technique [0002] With the rapid development of Internet technology, millions of new images are growing on the Internet every day. How to quickly and efficiently retrieve target images from massive images according to user needs is the goal of image retrieval systems. Image semantic annotation is a key step in the preparation of image retrieval. Through image semantic annotation, the image retrieval problem can be transformed into a text retrieval problem with mature technology and high efficiency. However, the traditional semantic annotation is to manually describe keywords for each image. In the era of data explosion, this method is obviously time-consuming and inefficient. Semantic automatic annotation based on image content is to use computer to automatically extract vis...

Claims

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Application Information

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IPC IPC(8): G06K9/62G06K9/34G06K9/46G06F17/27G06K9/72
CPCG06F40/284G06V10/267G06V10/40G06V30/274G06F18/23213G06F18/214
Inventor 杨婉李青海简宋全邹立斌
Owner GUANGDONG KINGPOINT DATA SCI & TECH CO LTD
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