Affiliation:
1. School of Foreign Languages, Hubei Engineering University, Xiaogan, China
2. College of Technology, Hubei Engineering University, Xiaogan, China
Abstract
Image self-coupling and feature interference lead to poor retrieval performance in massive image retrieval of mobile terminals. This paper proposes a massive image retrieval method of mobile terminals based on weighted aggregation depth features. The pixel big data detection model of massive images of mobile terminals is constructed, the collected pixel information of massive images of mobile terminals is restructured, the edge contour feature parameter set of massive images of mobile terminals is extracted, the feature fusion processing of massive images of mobile terminals is carried out in gradient pixel space by means of feature reconstruction and gray moment invariant feature analysis, the depth feature detection of massive images of mobile terminals is realized by using weighted aggregation method, the gradient value of pixels of massive images of each mobile terminal is calculated, and the optimized retrieval of massive images of mobile terminals is realized according to the fusion result of gradient weighted information. Simulation results show that this method has better feature clustering, stronger image detection and recognition, and anti-interference ability and improves the precision and recall of image retrieval.
Funder
Outstanding Youth Scientific Innovation Team Support Foundation
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Information Systems
Reference17 articles.
1. Recursive and noise-exclusive fuzzy switching median filter for impulse noise reduction
2. View Generation for Multiview Maximum Disagreement Based Active Learning for Hyperspectral Image Classification
3. Kernel estimation from salient structure for robust motion deblurring
4. Multi-feature high-resolution remote sensing road extraction based on PPMU-net;Y. H. Zhang;Computer Engineering and Application,2021
5. Deep attribute learning based traffic sign detection;F. S. Wang;Journal of Jilin University (Engineering and Technology Edition),2018