94 research outputs found
Lung Nodule Image Classification Based on Local Difference Pattern and Combined Classifier
This paper proposes a novel lung nodule classification method for low-dose CT images. The method includes two stages. First, Local Difference Pattern (LDP) is proposed to encode the feature representation, which is extracted by comparing intensity difference along circular regions centered at the lung nodule. Then, the single-center classifier is trained based on LDP. Due to the diversity of feature distribution for different class, the training images are further clustered into multiple cores and the multicenter classifier is constructed. The two classifiers are combined to make the final decision. Experimental results on public dataset show the superior performance of LDP and the combined classifier
NewsBench: A Systematic Evaluation Framework for Assessing Editorial Capabilities of Large Language Models in Chinese Journalism
We present NewsBench, a novel evaluation framework to systematically assess
the capabilities of Large Language Models (LLMs) for editorial capabilities in
Chinese journalism. Our constructed benchmark dataset is focused on four facets
of writing proficiency and six facets of safety adherence, and it comprises
manually and carefully designed 1,267 test samples in the types of multiple
choice questions and short answer questions for five editorial tasks in 24 news
domains. To measure performances, we propose different GPT-4 based automatic
evaluation protocols to assess LLM generations for short answer questions in
terms of writing proficiency and safety adherence, and both are validated by
the high correlations with human evaluations. Based on the systematic
evaluation framework, we conduct a comprehensive analysis of ten popular LLMs
which can handle Chinese. The experimental results highlight GPT-4 and ERNIE
Bot as top performers, yet reveal a relative deficiency in journalistic safety
adherence in creative writing tasks. Our findings also underscore the need for
enhanced ethical guidance in machine-generated journalistic content, marking a
step forward in aligning LLMs with journalistic standards and safety
considerations.Comment: Long paper, ACL 2024 Mai
Leaf-trait relationships of Quercus liaotungensis along an altitudinal gradient in Dongling Mountain, Beijing
A Case Study on Attribute Recognition of Heated Metal Mark Image Using Deep Convolutional Neural Networks
Heated metal mark is an important trace to identify the cause of fire. However, traditional methods mainly focus on the knowledge of physics and chemistry for qualitative analysis and make it still a challenging problem. This paper presents a case study on attribute recognition of the heated metal mark image using computer vision and machine learning technologies. The proposed work is composed of three parts. Material is first generated. According to national standards, actual needs and feasibility, seven attributes are selected for research. Data generation and organization are conducted, and a small size benchmark dataset is constructed. A recognition model is then implemented. Feature representation and classifier construction methods are introduced based on deep convolutional neural networks. Finally, the experimental evaluation is carried out. Multi-aspect testings are performed with various model structures, data augments, training modes, optimization methods and batch sizes. The influence of parameters, recognitio efficiency and execution time are also analyzed. The results show that with a fine-tuned model, the recognition rate of attributes metal type, heating mode, heating temperature, heating duration, cooling mode, placing duration and relative humidity are 0.925, 0.908, 0.835, 0.917, 0.928, 0.805 and 0.92, respectively. The proposed method recognizes the attribute of heated metal mark with preferable effect, and it can be used in practical application
An Improved GANs Model for Steel Plate Defect Detection
Abstract
Automatic steel plate defect detection is very important for it can monitor the product quality. This paper makes a study on steel plate defect detection based on machine learning. The main difficult is that there is not enough data to make powerful detection models. We propose a Generative Adversarial Networks based method to generate synthetic training image. A novel structure is designed with type related variable incorporated in Generator and a classification branch added to Discriminator. With expanded dataset, two detection algorithm, Faster R-CNN and YOLO are adopted. Various model structures, optimization methods, batch sizes and model execution time are evaluated and the influence of parameters are also analyzed. The experimental results show that the proposed novel data generation method can effectively improve the model performance.</jats:p
DBT-UNETR: Double Branch Transformer with Cross Fusion for 3D Medical Image Segmentation
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