Wenqing Zhu

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2papers

2 Papers

CVApr 24, 2025Code
VEU-Bench: Towards Comprehensive Understanding of Video Editing

Bozheng Li, Yongliang Wu, Yi Lu et al. · utoronto

Widely shared videos on the internet are often edited. Recently, although Video Large Language Models (Vid-LLMs) have made great progress in general video understanding tasks, their capabilities in video editing understanding (VEU) tasks remain unexplored. To address this gap, in this paper, we introduce VEU-Bench (Video Editing Understanding Benchmark), a comprehensive benchmark that categorizes video editing components across various dimensions, from intra-frame features like shot size to inter-shot attributes such as cut types and transitions. Unlike previous video editing understanding benchmarks that focus mainly on editing element classification, VEU-Bench encompasses 19 fine-grained tasks across three stages: recognition, reasoning, and judging. To enhance the annotation of VEU automatically, we built an annotation pipeline integrated with an ontology-based knowledge base. Through extensive experiments with 11 state-of-the-art Vid-LLMs, our findings reveal that current Vid-LLMs face significant challenges in VEU tasks, with some performing worse than random choice. To alleviate this issue, we develop Oscars, a VEU expert model fine-tuned on the curated VEU-Bench dataset. It outperforms existing open-source Vid-LLMs on VEU-Bench by over 28.3% in accuracy and achieves performance comparable to commercial models like GPT-4o. We also demonstrate that incorporating VEU data significantly enhances the performance of Vid-LLMs on general video understanding benchmarks, with an average improvement of 8.3% across nine reasoning tasks.

CROct 20, 2021
On the Effectiveness of Clone Detection for Detecting IoT-related Vulnerable Clones

Kentaro Ohno, Norihiro Yoshida, Wenqing Zhu et al.

Since IoT systems provide services over the Internet, they must continue to operate safely even if malicious users attack them. Since the computational resources of edge devices connected to the IoT are limited, lightweight platforms and network protocols are often used. Lightweight platforms and network protocols are less resistant to attacks, increasing the risk that developers will embed vulnerabilities. The code clone research community has been developing approaches to fix buggy (e.g., vulnerable) clones simultaneously. However, there has been little research on IoT-related vulnerable clones. It is unclear whether existing code clone detection techniques can perform simultaneous fixes of the vulnerable clones. In this study, we first created two datasets of IoT-related vulnerable code. We then conducted a preliminary investigation to show whether existing code clone detection tools (e.g., NiCaD, CCFinderSW) are capable of detecting IoT-related vulnerable clones by applying them to the created datasets. The preliminary result shows that the existing tools can detect them partially.