Research on Key Techniques for Enginery Teaching Platform Based on Computer Dynamic Simulation Technique

The web teaching platform based on virtual reality technique is a challenge to the traditional teaching mode and a necessity with the development and maturity of information technologies. Based on the easily made and operated VR techniques with its immersion and interactivity, this paper combined resources about the enginery knowledge and information to build the overall platform. It significantly improves users’ feeling about and understanding of the part models. It can be visually perceived and is flexible and convenient, providing users with operating experience which makes virtual reality and the real world consistent with each other. Eventually, both people and models can dynamically interact and perceptively communicate with each other.

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