AR-Based Virtual Trajectory Guidance and Training Control Method for Ski Resort
A technology of virtual trajectory and control method, which is applied in the directions of instruments, calculations, image data processing, etc., and can solve problems such as inability to meet skiing needs and lack of action guidance
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no. 1 example
[0034] like figure 1 : the program flow chart of the present invention.
[0035] Step S11: The server acquires map scene information of the ski resort, automatically or manually recognizes the ski resort and maps it to virtual coordinates.
[0036] Step S12: The server divides a plurality of sliding tracks in the map according to different difficulty coefficients and training objectives, and marks the plurality of sliding tracks.
[0037] Labeling is divided into normal labeling, rewarding labeling and punitive labeling; normal labeling is divided into acceleration, deceleration, left turn, right turn and action label.
[0038] Step S13: The wearer selects different sliding tracks according to the difficulty factor recommended by the virtual ski instructor, or autonomously selects a sliding track with a specific training target.
[0039] Step S14: The mobile terminal uses the AR glasses to highlight the labels in the sliding track selected by the wearer, and low-brightness d...
no. 2 example
[0044] Determine whether the wearer's score is valid. If the distance between the wearer's sliding track and the preset sliding track is less than the preset minimum distance, the score is valid; if the distance between the wearer's sliding track and the preset sliding track is greater than The preset minimum distance, the score is invalid.
[0045] Labeling is divided into normal labeling, rewarding labeling and punitive labeling.
[0046] The normal labels are divided into: acceleration, deceleration, left turn, right turn and action labels.
[0047] The bonus point value of the rewarding annotation is relatively large.
[0048] The deduction score of the punitive labeling is relatively large.
no. 3 example
[0050] figure 2 Among them, 101 the first skier and 102 the second skier choose the leftmost straight skiing track.
[0051] 103 third skiers, 104 fourth skiers and 105 fifth skiers choose the middle small S ski track.
[0052] 106 sixth skiers, 107 seventh skiers, 108 eighth skiers, 109 ninth skiers and 110 tenth skiers chose the rightmost big S ski track.
[0053] like figure 2 , the marking colors in the leftmost straight sliding track, the middle small S sliding track and the rightmost large S sliding track are different.
[0054] like figure 2 , the up arrow means acceleration, the down arrow means deceleration, the arrow pointing to the left means turning left ahead, and the arrow pointing to the right means turning right ahead.
[0055]The first skier 101 and the second skier 102 on the leftmost straight sliding track see through AR glasses that the marked colors in the leftmost straight sliding track are relatively bright, the small S sliding track in the middle...
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