Abstract
Object detection plays an important role in the field of computer vision. The purpose of object detection is to identify the objects of interest in the image and determine their categories and positions. Object detection has many important applications in various fields. This article addresses the problems of unclear foreground contour in moving object detection and excessive noise points in the global vision, proposing an improved Gaussian mixture model for feature fusion. First, the RGB image was converted into the HSV space, and a mixed Gaussian background model was established. Next, the object area was obtained through background subtraction, residual interference in the foreground was removed using the median filtering method, and morphological processing was performed. Then, an improved Canny algorithm using an automatic threshold from the Otsu method was used to extract the overall object contour. Finally, feature fusion of edge contours and the foreground area was performed to obtain the final object contour. The experimental results show that this method improves the accuracy of the object contour and reduces noise in the object.
Funder
Suqian Sci&Tech Program
Suqian University Scientific Research Fund for Talent Introduction
Reference23 articles.
1. Efficient parallel implementation of Gaussian Mixture Model background subtraction algorithm on an embedded multi-core Digital Signal Processor;Bariko;Computers and Electrical Engineering,2023
2. Role of artificial intelligence in object detection: a review;Bisht,2022
3. Moving object detection based on background difference and three frame difference;Chi;Network Security Technology & Application,2014
4. Labeled dataset for integral evaluation of moving object detection algorithms: LASIESTA;Cuevas;Computer Vision and Image Understanding,2016
5. Research on moving target detection based on improved Gaussian mixture model;Dong,2018