Search Results for author: Qunwei Lin

Found 5 papers, 0 papers with code

Optimizing Contrail Detection: A Deep Learning Approach with EfficientNet-b4 Encoding

no code implementations20 Apr 2024 Qunwei Lin, Qian Leng, Zhicheng Ding, Chao Yan, Xiaonan Xu

In the pursuit of environmental sustainability, the aviation industry faces the challenge of minimizing its ecological footprint.

Application analysis of ai technology combined with spiral CT scanning in early lung cancer screening

no code implementations26 Jan 2024 Shulin Li, Liqiang Yu, Bo Liu, Qunwei Lin, Jiaxin Huang

However, at present, there are few studies on the diagnosis of early lung cancer by AI technology combined with SCT scanning.

Organ Segmentation

Semantic Similarity Matching for Patent Documents Using Ensemble BERT-related Model and Novel Text Processing Method

no code implementations6 Jan 2024 Liqiang Yu, Bo Liu, Qunwei Lin, Xinyu Zhao, Chang Che

In the realm of patent document analysis, assessing semantic similarity between phrases presents a significant challenge, notably amplifying the inherent complexities of Cooperative Patent Classification (CPC) research.

Semantic Similarity Semantic Textual Similarity

Enhancing Essay Scoring with Adversarial Weights Perturbation and Metric-specific AttentionPooling

no code implementations6 Jan 2024 Jiaxin Huang, Xinyu Zhao, Chang Che, Qunwei Lin, Bo Liu

To address the specific needs of ELLs, we propose the use of DeBERTa, a state-of-the-art neural language model, for improving automated feedback tools.

Automated Essay Scoring Language Modelling +2

Integration and Performance Analysis of Artificial Intelligence and Computer Vision Based on Deep Learning Algorithms

no code implementations20 Dec 2023 Bo Liu, Liqiang Yu, Chang Che, Qunwei Lin, Hao Hu, Xinyu Zhao

This paper focuses on the analysis of the application effectiveness of the integration of deep learning and computer vision technologies.

Image Classification object-detection +1

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