As an important part of marine ecosystem, luminescent zooplankton is of great significance to the study of marine ecology and carbon cycle. The statistics of the number and size of luminous zooplankton is an important...
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Due to the advantages of Ceramic Column Grid Array (CCGA) packaging technology such as the good thermal matching and vibration resistance, it is often used for the manufacturing of high-end chips. However, in practica...
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This work offers a thorough method for real-time dehazing of drone-captured images by different filtering techniques with post-processing improvements. Enhancing visibility and picture clarity in hazy situations is th...
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ISBN:
(数字)9798331528126
ISBN:
(纸本)9798331528133
This work offers a thorough method for real-time dehazing of drone-captured images by different filtering techniques with post-processing improvements. Enhancing visibility and picture clarity in hazy situations is the main goal since it is essential for applications like environmental monitoring, navigation, and surveillance. In order to estimate the atmospheric light and transmission map, the suggested methodology makes use of the dark channel. A farrow filter and a guided filter are then applied to improve the transmission. Metrics including the PSNR, SSIM, Execution time, and MSE that are derived from Python-based imageprocessing implementations are used to assess the effectiveness of the dehazing algorithms. The outcomes show notable gains in processing efficiency and image clarity. In order to accelerate the performance, this method was implemented on an FPGA based SoC. Power consumption and throughput of the FPGA - based solution were evaluated, demonstrating its effectiveness and appropriateness for real-time applications.
With active hardware development, the number of software machine learning-based systems has increased dramatically in all areas of human activity, in particular, in medicine. The use of machine learning elements in so...
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With active hardware development, the number of software machine learning-based systems has increased dramatically in all areas of human activity, in particular, in medicine. The use of machine learning elements in software systems requires the organization of a pipeline process of software development, testing, and support. The application of MLOps technologies will improve the quality and speed of system development, as well as simplify the process of adjusting the algorithm parameters to improve the system operation quality. The purpose of this work is to develop an MLOps pipeline that will consider all the necessary stages of software development based on machine learning algorithms for biomedical imageprocessing.
Clustering is a popular method for seg-menting retinal images due to its effectiveness in performance. This paper investigates the ability of multiple clustering algorithms to segment the retinal image to isolate bloo...
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Non-cooperation of targets is the main difficulty in inverse synthetic aperture radar imaging (ISAR). Target maneuvering during ISAR imaging severely interfere with image quality. The existing ISAR imaging algorithms ...
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Automated monitoring of urban vegetation, particularly trees, facilitates large-scale urban planning and environmental surveillance. However, such systems can be cost-prohibitive to deploy, especially in smaller citie...
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This research presents an innovative framework that uses blockchain technology to improve tumor segmentation in medical imaging. The approach tackles issues related to data security, particularly when dealing with rea...
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ISBN:
(纸本)9798350376975;9798350376968
This research presents an innovative framework that uses blockchain technology to improve tumor segmentation in medical imaging. The approach tackles issues related to data security, particularly when dealing with real private dataset, annotation accuracy, and collaboration. With the growing reliance of the medical industry on accurate tumor segmentation from medical images for cancer diagnosis and treatment, current methods are inadequate in maintaining data accuracy and promoting collaboration among experts across different countries. Our suggested approach utilizes blockchain technology to establish a decentralized, secure platform for the collaborative obtaining, annotation, and validation of medical images by data scientists, oncologists, and radiologists. Smart contracts streamline essential procedures such as verification of annotations, consensus among experts, and remuneration of contributors, guaranteeing the dependability and excellence of the data. Furthermore, the unchangeable record of transactions in the blockchain ensures a reliable basis for implementing artificial intelligence and machine learning algorithms. This improves the accuracy of segmenting data and allows for predictive modeling. This strategy not only improves the precision and effectiveness of tumor segmentation but also promotes a worldwide collaborative environment, which has the potential to revolutionize cancer diagnostics and treatment planning. Furthermore, it ensures the privacy and security of patient data.
Efficient human presence detection within specified Regions of Interest (ROIs) is essential to many real-world applications, including as resource allocation, security surveillance, and crowd monitoring. In this paper...
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The implementation of signal processingalgorithms is crucial in the development of Synthetic Aperture Radar (SAR) systems. However, many references do not provide source code-level explanations, making it difficult f...
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