Consistency Estimation Method of Distributed Information of Human Joints Based on Interactive Multi-model

A technology of interactive multi-model and human joints, which is applied in the field of distributed information consistency estimation of human joint points based on interactive multi-model, can solve the problem of high computing power and robustness requirements of the data fusion center and resistance to network instability Weak, consistent estimation does not appear and other problems, to achieve the effect of easy expansion, reduced impact, and improved robustness

Active Publication Date: 2018-09-18
SHANDONG UNIV
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Problems solved by technology

[0003] At present, human behavior perception based on multiple RGBD sensors is still in a centralized stage, requiring one or more data fusion centers to fuse 3D data and human skeleton joint point data, which requires high computing power and robustness for data fusion centers , Weak resistance to network instability and low scalability
[0004] Among them, the related technology for the consensus estimation of the distributed information of the human body joints with interactive multi-models has not yet appeared.

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  • Consistency Estimation Method of Distributed Information of Human Joints Based on Interactive Multi-model
  • Consistency Estimation Method of Distributed Information of Human Joints Based on Interactive Multi-model
  • Consistency Estimation Method of Distributed Information of Human Joints Based on Interactive Multi-model

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Embodiment Construction

[0033] The present invention is described in detail below in conjunction with accompanying drawing:

[0034] Such as figure 1 As shown, the distributed information consistency estimation method of human joint points based on interactive multi-model realizes distributed processing of data and distributed fusion of information by constructing a dynamic distributed RGBD sensor network, and there is no centralized information processing in the network With the fusion center, sensor nodes only exchange information with neighboring nodes, and through a limited number of consistency iterations, the estimation of the perceived target state in the network is consistent.

[0035] The sensor network realizes the transmission of information through wireless communication. Each sensor is connected to a local processor, which can be a microcomputer or an ARM development board. After the local processor processes the information, it exchanges network data with neighboring nodes through wir...

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Abstract

The invention discloses a method for estimating the consistency of distributed information of human joint points based on interactive multi-models, the position initialization of the joint points of the skeleton; the motion estimation of the joint points by local sensors: the construction of the motion model and the observation model of the joint points of the human body, and the realization of the state of the joint points Efficient estimation of the target joint points between sensors: each sensor sends its own estimated joint point information vector, information matrix and its corresponding information contribution, model probability to the adjacent communication sensor nodes, and Receive the information of the surrounding sensors, use the information consistency algorithm, fuse the estimation results of the surrounding sensors, and iterate several times in a row to achieve the convergence of the algorithm and the estimation results. By building a distributed RGBD sensor network and using the information consistency algorithm, the human body is realized Distributed estimation of joint points, no data fusion center in the network, improves the robustness of the system to node information error and invalidity, and makes it easier to expand the sensor network.

Description

technical field [0001] The invention relates to the field of information technology, in particular to a method for estimating the consistency of distributed information of joint points of a human body based on interactive multi-models. Background technique [0002] Human behavior recognition based on multiple RGBD cameras has attracted extensive attention from researchers, and has been applied to human behavior detection in operating rooms, factory workshops, automobile assembly, indoor monitoring and other environments, effectively solving the problem of human occlusion and possible human- The robot collision problem has important application value. [0003] At present, human behavior perception based on multiple RGBD sensors is still in a centralized stage, requiring one or more data fusion centers to fuse 3D data and human skeleton joint point data, which requires high computing power and robustness for data fusion centers , weak resistance to network instability and low...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T7/00G06T7/40G06K9/00G06T13/20G06T17/00
CPCG06T7/40G06T13/20G06T17/00G06T2200/04G06T2200/08G06V40/23
Inventor 刘国良田国会
Owner SHANDONG UNIV
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