Publications by authors named "Jianlin Qiu"

With the growing popularity of unmanned aerial vehicles (UAVs), their improper use is significantly disrupting society. Individuals and organizations have been continuously researching methods for detecting UAVs. However, most existing detection methods fail to account for the impact of similar flying objects, leading to weak anti-interference capabilities.

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Article Synopsis
  • The study discusses how the accuracy of lung image segmentation is hindered by obstructions from foreground objects and introduces a new algorithm called HAFS, which utilizes a combination of skip connections and attention mechanisms.
  • HAFS is built on the yolov8 network and enhances feature fusion by integrating both dense and sparse skip connections, along with attention gates to emphasize important features.
  • The algorithm was tested on two lung image datasets, Montgomery and Shenzhen chest X-rays, and showed improved metrics such as precision, recall, and accuracy compared to existing algorithms, demonstrating its effectiveness.
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Currently, surgery remains the primary treatment for craniocerebral tumors. Before doctors perform surgeries, they need to determine the surgical plan according to the shape, location, and size of the tumor; however, various conditions of different patients make the tumor segmentation task challenging. To improve the accuracy of determining tumor shape and realizing edge segmentation, a U-shaped network combining a residual pyramid module and a dual feature attention module is proposed.

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Background: Studies have shown that the type of low-grade glioma is associated with its shape. The traditional diagnostic method involves extraction of the tumor shape from MRIs and diagnosing the type of glioma based on corresponding relationship between the glioma shape and type. This method is affected by the MRI background, tumor pixel size, and doctors' professional level, leading to misdiagnoses and missed diagnoses.

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