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arxiv: 2011.13202 · v1 · pith:AUVV2VZJ · submitted 2020-11-26 · cs.CV · cs.GR· cs.LG· eess.IV

t-EVA: Time-Efficient t-SNE Video Annotation

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classification cs.CV cs.GRcs.LGeess.IV
keywords videoannotationdatasetsfeaturelarge-scalemethodothersimilarity
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Video understanding has received more attention in the past few years due to the availability of several large-scale video datasets. However, annotating large-scale video datasets are cost-intensive. In this work, we propose a time-efficient video annotation method using spatio-temporal feature similarity and t-SNE dimensionality reduction to speed up the annotation process massively. Placing the same actions from different videos near each other in the two-dimensional space based on feature similarity helps the annotator to group-label video clips. We evaluate our method on two subsets of the ActivityNet (v1.3) and a subset of the Sports-1M dataset. We show that t-EVA can outperform other video annotation tools while maintaining test accuracy on video classification.

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