Roygaga, Chaitanya, authorBlanchard, Nathaniel, advisorBeveridge, Ross, committee memberReiser, Raoul, committee member2022-01-072024-01-062021https://hdl.handle.net/10217/234192Athletes typically undergo regular evaluations by trainers and coaches to assess performance and injury risk. One of the most popular movements to examine is the vertical jump — a sport-independent means of assessing both lower extremity risk and power. Specifically, maximal effort countermovement and drop jumps performed on bilateral force plates provide a wealth of metrics; however, detailed evaluation of this movement requires specialized equipment (force plates) and trained experts to interpret results, limiting its use. Computer vision techniques applied to videos of such movements are a less expensive alternative for extracting such metrics. Blanchard et al. collected a dataset of 89 athletes performing these movements and showcased how OpenPose could be applied to the data. However, athlete error calls into question 46.2% of movements — in these cases, an expert assessor would have the athlete redo the movement to eliminate the error. Here, I augmented Blanchard et al. with expert labels of error and established benchmark performance on automatic error identification. In total, 14 different types of errors were identified by trained annotators. My benchmark models identified errors with an F1 score of 0.710 and a Kappa of 0.457 (Kappa measures accuracy over chance).born digitalmasters thesesengCopyright and other restrictions may apply. User is responsible for compliance with all applicable laws. For information about copyright law, please see https://libguides.colostate.edu/copyright.performance assessmentinjury riskvertical jumplower extremityerrorOpenPoseAPE-V: athlete performance evaluation using videoText