Title :
Evaluation on Huawei Accurate and Fast Mobile Video Annotation Challenge
Author :
Zhenhua Chai ; Dong Wang ; Tian Wang ; Jianzhuang Liu ; Xinzi Zhang ; Yihong Gong
Author_Institution :
Media Technol. Lab., Huawei Technol. Co., Ltd., Shenzhen, China
Abstract :
Massive user generated content (UGC) videos are produced each day on the Internet. These videos have become a very important integrant in existing social networking services (SNS). However, unlike professional films, the content of UGC videos is usually unstructured and lacks contextual annotation for management. The motivation behind Huawei Accurate and Fast Mobile Video Annotation Challenge (MoVAC) is to evaluate different algorithms on the generation of local annotation on UGC videos under the same protocol, and to compare them not only in accuracy but also in efficiency. More than 15 teams from different countries have enrolled in this competition, and in the final round 17 submissions with valid result from 6 teams were received. The results show that recent popular deep convolutional neural networks (CNN) could be a potentially good solution to this task.
Keywords :
convolution; neural nets; video signal processing; CNN; Huawei accurate and fast mobile video annotation challenge; Internet; MoVAC; SNS; UGC videos; deep convolutional neural networks; local annotation generation; protocol; social networking services; user generated content videos; Accuracy; Databases; Educational institutions; Feature extraction; Support vector machines; Testing; Training; MoVAC; UGC; deep learning; video annotation;
Conference_Titel :
Multimedia and Expo Workshops (ICMEW), 2014 IEEE International Conference on
Conference_Location :
Chengdu
DOI :
10.1109/ICMEW.2014.6890607