English

OFAR: A Multimodal Evidence Retrieval Framework for Illegal Live-streaming Identification

Information Retrieval 2023-04-27 v2

Abstract

Illegal live-streaming identification, which aims to help live-streaming platforms immediately recognize the illegal behaviors in the live-streaming, such as selling precious and endangered animals, plays a crucial role in purifying the network environment. Traditionally, the live-streaming platform needs to employ some professionals to manually identify the potential illegal live-streaming. Specifically, the professional needs to search for related evidence from a large-scale knowledge database for evaluating whether a given live-streaming clip contains illegal behavior, which is time-consuming and laborious. To address this issue, in this work, we propose a multimodal evidence retrieval system, named OFAR, to facilitate the illegal live-streaming identification. OFAR consists of three modules: Query Encoder, Document Encoder, and MaxSim-based Contrastive Late Intersection. Both query encoder and document encoder are implemented with the advanced OFA encoder, which is pretrained on a large-scale multimodal dataset. In the last module, we introduce contrastive learning on the basis of the MaxiSim-based late intersection, to enhance the model's ability of query-document matching. The proposed framework achieves significant improvement on our industrial dataset TaoLive, demonstrating the advances of our scheme.

Cite

@article{arxiv.2304.12608,
  title  = {OFAR: A Multimodal Evidence Retrieval Framework for Illegal Live-streaming Identification},
  author = {Lin Dengtian and Ma Yang and Li Yuhong and Song Xuemeng and Wu Jianlong and Nie Liqiang},
  journal= {arXiv preprint arXiv:2304.12608},
  year   = {2023}
}
R2 v1 2026-06-28T10:16:47.821Z