Calzavara, 2020 - Google Patents
Human pose augmentation for facilitating Violence Detection in videos: a combination of the deep learning methods DensePose and VioNetHuman pose …Calzavara, 2020
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- 4527586591628477199
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- Calzavara I
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In recent years, deep learning, a critical technology in computer vision, has achieved remarkable milestones in many fields, such as image classification and object detection. In particular, it has also been introduced to address the problem of violence detection, which is …
- 238000001514 detection method 0 title abstract description 175
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