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861
SGSNet: a lightweight deep learning model for strawberry growth stage detection
Published 2024-12-01“…However, dense planting patterns and complex environments within greenhouses present challenges for accurately detecting growth stages. …”
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862
Research on detection of wheat tillers in natural environment based on YOLOv8-MRF
Published 2025-03-01“…To bolster agricultural efficiency and precision, this study introduces the YOLOv8-MRF model (multi-path coordinate attention, receptive field attention convolution, and Focaler-CIoU-optimized YOLOv8), a groundbreaking advancement in automated detection of wheat tillers. …”
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863
CIDNet: A Maritime Ship Detection Model Based on ISAR Remote Sensing
Published 2025-05-01“…The model is based on the Boundary Box Efficient Transformer (BETR) architecture, which combines super-resolution preprocessing, a deep feature extraction network, a feature fusion technique, and a coordinate maintenance mechanism to improve the detection accuracy and real-time performance of ship targets in complex settings. …”
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864
A Multi-Domain Feature Fusion CNN for Myocardial Infarction Detection and Localization
Published 2025-06-01Get full text
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865
Double-layer membrane framework-based gold microelectrode for determination of natural labile copper in complex water environments
Published 2025-03-01“…However, the determination of low concentration labile Cu (CuLabile) in complex water environments remains a huge challenge. …”
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866
YOLO-SRSA: An Improved YOLOv7 Network for the Abnormal Detection of Power Equipment
Published 2025-05-01“…Existing models have high false and missed detection rates in complex weather and multi-scale equipment scenarios. …”
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867
Ship detection optimization method in SAR imagery based on multi-feature weighting
Published 2020-03-01“…Aiming at the problem that the accuracy of traditional ship detection algorithms is not satisfying in complex scene with many false alarm targets,a ship detection optimization method in SAR imagery based on multi-feature weighting was proposed.Firstly,the marker-based watershed algorithm was employed to remove land from SAR amplitude image.Then,the CFAR algorithm based on log-normal distribution was used to obtain candidate targets from no land image.Furthermore,the length to width ratio,the ship area and the contrast ratio of the candidate targets were extracted.Finally,a variance coefficient method was proposed to distribute the weight of the three features,and the confidence levels were calculated by combining the normalized feature vectors of the candidate targets with the feature weight.By determining the best confidence level,false alarm targets among the candidate targets were removed to optimize ship detection results.In order to verify the proposed method,experiments were carried on with the GF-3 SAR images of different complex scenes.The experimental results show that the proposed method is feasible and effective.…”
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868
An image processing technique for optimizing industrial defect detection using dehazing algorithms.
Published 2025-01-01“…In recent years, the demand for efficient and accurate defect detection algorithms in industrial production has been increasing. …”
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869
Complex PM2.5 Pollution and Hospital Admission for Respiratory Diseases over Big Data in Cloud Environment
Published 2020-01-01“…Cloud computing may be an efficient and low-cost way to solve this problem. This paper investigates a problem of a complex system: the impact of PM2.5 on hospitalization for respiratory diseases. …”
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870
Image-Based Malicious Network Traffic Detection Framework: Data-Centric Approach
Published 2025-06-01“…This often leads to increased computational overhead and heightened complexity in detection models, potentially degrading overall system performance and efficiency. …”
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871
AN ITERATIVE ALGORITHM OF OBJECT DETECTION IN VIDEO SEQUENCE BASED ON HISTOGRAM SPATIAL MEASURES
Published 2019-06-01“…The parameters of algorithm are defined in terms of detection efficiency and computational complexity.…”
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872
An Anomaly Detection Method for Industrial System Cybersecurity Based on GGL-WAVE-CNN
Published 2025-07-01“…Current approaches often struggle to handle complex, unknown topological time series data, thereby necessitating improved anomaly detection accuracy. …”
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873
Automatic detection of foreign object intrusion along railway tracks based on MACENet.
Published 2025-01-01“…Ensuring high accuracy and efficiency in foreign object intrusion detection along railway lines is critical for guaranteeing railway operational safety under limited resource conditions. …”
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874
Redundancy and conflict detection method for label-based data flow control policy
Published 2023-10-01“…To address the challenge of redundancy and conflict detection in the label-based data flow control mechanism, a label description method based on atomic operations has been proposed.When the label is changed, there is unavoidable redundancy or conflict between the new label and the existing label.How to carry out redundancy and conflict detection is an urgent problem in the label-based data flow control mechanism.To address the above problem, a label description method was proposed based on atomic operation.The object label was generated by the logical combination of multiple atomic tags, and the atomic tag was used to describe the minimum security requirement.The above label description method realized the simplicity and richness of label description.To enhance the detection efficiency and reduce the difficulty of redundancy and conflict detection, a method based on the correlation of sets in labels was introduced.Moreover, based on the detection results of atomic tags and their logical relationships, redundancy and conflict detection of object labels was carried out, further improving the overall detection efficiency.Redundancy and conflict detection of atomic tags was based on the relationships between the operations contained in different atomic tags.If different atomic tags contained the same operation, the detection was performed by analyzing the relationship between subject attributes, environmental attributes, and rule types in the atomic tags.On the other hand, if different atomic tags contained different operations without any relationship between them, there was no redundancy or conflict.If there was a partial order relationship between the operations in the atomic tags, the detection was performed by analyzing the partial order relationship of different operations, and the relationship between subject attribute, environment attribute, and rule types in different atomic tags.The performance of the redundancy and conflict detection algorithm proposed is analyzed theoretically and experimentally, and the influence of the number and complexity of atomic tags on the detection performance is verified through experiments.…”
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875
Off-target sequence variations driven by the intrinsic properties of the Cas-sgRNA-DNA complex in genome editing.
Published 2025-01-01“…Computational approaches are anticipated to streamline the detection of off-target mutations; however, the performance of current prediction tools is limited, likely owing to insufficient knowledge of off-target mutation characteristics. …”
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876
Study of conveyor belt deviation detection based on improved YOLOv8 algorithm
Published 2024-11-01“…Abstract Conveyor belt deviation is a commmon and severe type of fault in belt conveyor systems, often resulting in significant economic losses and potential environment pollution. Traditional detection methods have obvious limitations in fault localization precision and analysis accuracy, unable to meet the demands of efficient and real-time fault detection in complex industrial scenarios. …”
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877
Deep Reinforcement Learning-Based Motion Control Optimization for Defect Detection System
Published 2025-04-01“…For practical implementation and validation, a PMSM simulation model is constructed in MATLAB/Simulink, serving as an interactive training platform for the DRL agent and facilitating efficient, robust training. The simulation results validate the effectiveness and superiority of the proposed optimization strategy, demonstrating its applicability and potential for precise and robust control in complex nonlinear defect detection systems.…”
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878
Subsea Nodule Recognition and Deployment Detection Method Based on Improved YOLOv8s
Published 2025-01-01“…An improved small-target detection model based on YOLOv8s is proposed to address the challenges associated with deep-sea polymetallic nodule detection, such as complex target shapes, small sizes, and strong environmental interference. …”
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879
Integrating ANN and ANFIS for effective fault detection and location in modern power grid
Published 2025-01-01“…The increasing complexity and demand for reliability in modern power systems necessitate advanced techniques for fault detection, classification, and location. …”
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880
Lightweight Small Target Detection Algorithm Based on YOLOv8 Network Improvement
Published 2025-01-01“…The modules have been designed to optimise feature extraction and improve model efficiency. The paper also discusses the challenges associated with low accuracy in small target detection and high model complexity in UAV applications. …”
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