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Related Concept Videos

Continuous -time Fourier Transform01:11

Continuous -time Fourier Transform

The Fourier series is instrumental in representing periodic functions, offering a powerful method to decompose such functions into a sum of sinusoids. This technique, however, necessitates modification when applied to nonperiodic functions. Consider a pulse-train waveform consisting of a series of rectangular pulses. When these pulses have a finite period, they can be accurately represented by a Fourier series. Yet, as the period approaches infinity, resulting in a single, isolated pulse, the...
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IR spectra are divided into two main regions: the diagnostic region and the fingerprint region. The diagnostic region of the spectrum lies above 1500 cm−1. The absorptions resulting from single-bond vibrations of the N–H, C–H, and O–H stretch at higher wavenumbers and appear on the left side of the spectrum. The stretching absorptions of the C≡C and C≡N occur between 2100–2300 cm−1. In contrast, those arising from stretching absorptions of the C=O, C=N, and C=C occur between 1600–1850 cm−1.
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Related Experiment Video

Updated: Jun 16, 2026

Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique
04:48

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Published on: July 5, 2024

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Medical image segmentation network based on multi-scale frequency domain filter.

Yufeng Chen1, Xiaoqian Zhang1, Lifan Peng1

  • 1School of Information Engineering, Southwest University of Science and Technology, Mianyang 621010, PR China.

Neural Networks : the Official Journal of the International Neural Network Society
|April 5, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces FDFUNet, a novel deep learning model for medical image segmentation. It enhances segmentation performance and generalization by addressing limitations in existing UNet models using new convolutional blocks and frequency domain analysis.

Keywords:
ChannelFrequency domainMedical image segmentationSpatial domainUNet

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Area of Science:

  • Deep learning
  • Medical image analysis
  • Computer-aided diagnosis

Background:

  • UNet and its variants are powerful for medical image segmentation but have limitations.
  • Existing methods struggle with insufficient receptive fields, channel feature redundancy, and inter-channel relationships.
  • These limitations result in suboptimal segmentation performance and poor generalization.

Purpose of the Study:

  • To develop an improved deep learning framework for medical image segmentation.
  • To enhance the segmentation performance and generalization ability of UNet-based models.
  • To introduce novel modules addressing limitations in receptive field, depth, and feature channel interactions.

Main Methods:

  • Proposed the Double residual depthwise atrous convolution (DRDAC) block to improve receptive field and depth.
  • Introduced the Multi-scale frequency domain filter (MFDF) module to capture global information in the frequency domain.
  • Redesigned Axial selection channel attention (ASCA) to model interrelationships among feature channels.
  • Developed the FDFUNet baseline method integrating these novel modules.

Main Results:

  • Extensive experiments were conducted on five public medical image datasets.
  • The proposed FDFUNet demonstrated superior segmentation performance compared to state-of-the-art methods.
  • The method showed enhanced generalization ability across different datasets.

Conclusions:

  • The FDFUNet model effectively addresses limitations of traditional UNet architectures in medical image segmentation.
  • The integration of DRDAC, MFDF, and ASCA modules significantly improves segmentation accuracy and robustness.
  • The proposed frequency domain approach offers a promising direction for advanced medical image analysis.