Abstract
In recent years, smart camera devices under the Virtual Reality (VR) environment have been widely popularized. These devices can be equipped with fast and effective computer vision applications, including the detection of the balance ability of moving targets. Moving target balance ability detection plays an important role in public security, traffic monitoring and other fields, and is also a basic technology for many vision applications. Therefore, the requirements for accuracy and completeness of detection are getting higher and higher. This article proposes a tracking method Motion Model and Model Updater (MMMU) based on the balance acquisition and model update and intelligent adjustment of the motion model. Improved Motion Model (IMM) is a background sample balance acquisition algorithm based on simple linear iterative clustering, completes the abstraction of background images. Different from other update strategies with a fixed number of frames, the update strategy based on image histogram contrast relies on the human selective forgetting mechanism to better avoid burst frames and process similar frames. Since the data used to detect the balance ability of moving targets is inherently unbalanced, the idea of dealing with imbalance in data mining is introduced into it, and the problem of balance ability detection of moving targets is studied from the perspectives of downsampling and oversampling. In addition, temporal and spatial oversampling of the foreground and selective downsampling of the background are performed to reduce the imbalance of the data set, and the resampled data set is used for modeling and classification. The feasibility of the MMMU algorithm is tested through experiments, and the motion balance ability of the foreground target is detected relatively completely.
Highlights
Judging from the development of computer vision technology in recent years, Virtual Reality (VR) technology has shown unique advantages since its birth in the 1980s [1]
MODEL UPDATE STRATEGY BASED ON SELECTIVE FORGETTING MECHANISM Figure 6 is based on the actual situation of the detection research, using the following simple but effective selection strategy: it compares the ‘‘fingerprint’’ information of the current frame and the image frame in the most recent period of time to determine whether there is a huge difference or similarity situation, the former means that the current frame has undergone a brief mutation, and the latter means that the current frame has basically not changed during the recent period
From the perspective of the global space of the current frame, this article uses image detection and segmentation methods to solve the problem of obtaining the balance between the target appearance sample and the current background sample
Summary
Judging from the development of computer vision technology in recent years, Virtual Reality (VR) technology has shown unique advantages since its birth in the 1980s [1]. Video structuring technology refers to converting the key content of video data into hierarchical structured information through specific algorithms, such as key frame extraction, video segmentation, target detection, image description, image segmentation and other technical means. It is based on video advanced semantics classifies and stores key information, so that users can quickly retrieve the video content they need. The video structuring technology in this article uses five key technologies to achieve different functions, namely: key frame extraction, target detection, action recognition, scene recognition, and image description. This algorithm has high accuracy and can find the best matching target, the average time complexity is too high, and it takes more time than other search algorithms
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