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1361
LI-YOLOv8: Lightweight small target detection algorithm for remote sensing images that combines GSConv and PConv.
Published 2025-01-01“…In the domain of remote sensing image small target detection, challenges such as difficulties in extracting features of small targets, complex backgrounds that easily lead to confusion with targets, and high computational complexity with significant resource consumption are prevalent. …”
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1362
Finite-size effects in molecular simulations: a physico-mathematical view
Published 2025-12-01“…Here this feature is treated employing the same statistical mechanics framework developed for the first problem.…”
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1363
Contour wavelet diffusion – a fast and high-quality facial expression generation model
Published 2024-12-01“…Latent space diffusion models have shown promise in speeding up training by leveraging feature space parameters, but they require additional network structures. …”
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1364
TFDense-GAN: a generative adversarial network for single-channel speech enhancement
Published 2025-03-01“…Abstract Research indicates that utilizing the spectrum in the time–frequency domain plays a crucial role in speech enhancement tasks, as it can better extract audio features and reduce computational consumption. For the speech enhancement methods in the time–frequency domain, the introduction of attention mechanisms and the application of DenseBlock have yielded promising results. …”
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1365
MLHI-Net: multi-level hybrid lightweight water body segmentation network for urban shoreline detection
Published 2025-02-01“…Additionally, the network’s computational GLOPS is 13.45 G, and the number of parameters is 46.92 M, which can meet the requirements for real-time detection. …”
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1366
YOLO-GCOF: A Lightweight Low-Altitude Drone Detection Model
Published 2025-01-01“…The YOLO-GCOF model outperforms the original YOLOv8n, as demonstrated by a 1.1% improvement in mAP@50, alongside reductions in parameter count, computational overhead, and model size by 60%, 49.4%, and 55.1%, respectively. …”
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1367
Low-Damage Grasp Method for Plug Seedlings Based on Machine Vision and Deep Learning
Published 2025-06-01“…The lightweight network Mobilenet is used as the feature extraction network to reduce the number of parameters of the network. …”
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1368
CGDINet: A Deep Learning-Based Salient Object Detection Algorithm
Published 2025-01-01“…The results show that CGDINet outperforms other mainstream significance object detection models in evaluation metrics such as <inline-formula> <tex-math notation="LaTeX">${\mathrm {maxF}}_{\mathrm {\beta }}$ </tex-math></inline-formula>, <inline-formula> <tex-math notation="LaTeX">$\mathrm {S}_{\mathrm {\alpha }}$ </tex-math></inline-formula>, and MAE, with almost no increase in computational cost (FLOPs) and parameters. The experimental results validate that CGDINet can effectively address the issues of incomplete global feature extraction and insufficient attention to key areas, thereby significantly enhancing the performance of significance object detection.…”
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1369
Fusion of Multimodal Audio Data for Enhanced Speaker Identification Using Kolmogorov-Arnold Networks
Published 2025-01-01“…Although the classical deep learning methods are effective, they have rather high computational cost, which leads to usually cumbersome parameter tuning processes and hence reduce their applicability to real-world deployments. …”
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1370
Flat U-Net: An Efficient Ultralightweight Model for Solar Filament Segmentation in Full-disk Hα Images
Published 2025-01-01“…Each block effectively optimizes the channel features from the previous layer, significantly reducing parameters. …”
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1371
Data Integration Based on UAV Multispectra and Proximal Hyperspectra Sensing for Maize Canopy Nitrogen Estimation
Published 2025-04-01“…However, the CE of the integrated model decreased by 1.93% and 1.68%, respectively. Key features included multispectral red-edge indices (NREI, NDRE, CI) and texture parameters (R1m), alongside hyperspectral indices (SR, PRI) and spectral parameters (SDy, Rg) exhibited varying directional impacts on CNC estimation using RF. …”
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1372
Three-Dimensional Object Recognition Using Orthogonal Polynomials: An Embedded Kernel Approach
Published 2025-02-01“…Various signal preprocessing operations have been used for computer vision, including smoothing techniques, signal analyzing, resizing, sharpening, and enhancement, to reduce reluctant falsifications, segmentation, and image feature improvement. …”
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1373
Enhancing lung disease diagnosis with deep-learning-based CT scan image segmentation
Published 2025-09-01“…Whereas on the Kaggle dataset it achieved a Dice coefficient of 0.961, IoU of 0.930, computational time of 1.189 s, and 9.16 million trainable parameters. …”
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1374
Multi-Strategy Improvement of Coal Gangue Recognition Method of YOLOv11
Published 2025-03-01“…It exhibits a slight increase in computational load, despite an almost unchanged number of parameters, and demonstrates the best overall detection performance. …”
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1375
A global object-oriented dynamic network for low-altitude remote sensing object detection
Published 2025-05-01“…This study introduces the Global Object-Oriented Dynamic Network (GOOD-Net) algorithm, comprising three fundamental components: an object-oriented, dynamically adaptive backbone network; a neck network designed to optimize the utilization of global information; and a task-specific processing head augmented for detailed feature refinement. Novel module components, such as the ReSSD Block, GPSA, and DECBS, are integrated to enable fine-grained feature extraction while maintaining computational and parameter efficiency. …”
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1376
LWheatNet: a lightweight convolutional neural network with mixed attention mechanism for wheat seed classification
Published 2025-01-01“…Each network consists of three core layers, with each core layer is comprising one downsampling unit and multiple basic units. To minimize model parameters and computational load without sacrificing performance, each unit utilizes depthwise separable convolutions, channel shuffle, and channel split techniques.ResultsTo validate the effectiveness of the proposed model, we conducted comparative experiments with five classic network models: AlexNet, VGG16, MobileNet V2, MobileNet V3, and ShuffleNet V2. …”
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1377
YOLOv8-OCHD: A Lightweight Wood Surface Defect Detection Method Based on Improved YOLOv8
Published 2025-01-01“…Secondly, a C2f_RVB module is designed, which uses the RepViTBlock technique to optimize feature representation and effectively reduce the number of model parameters. …”
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1378
Transcriptome Derived Artificial neural networks predict PRRC2A as a potent biomarker for epilepsy
Published 2025-06-01“…It aids clinicians in addressing patient parameters and translational research. Artificial neural networks (ANNs) are computer models that attempt to mimic the neurons present in the human brain. …”
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1379
Research on Lightweight Method of Insulator Target Detection Based on Improved SSD
Published 2024-09-01“…The experimental results show that the parameter number of the proposed model is reduced from 26.15 M to 0.61 M, the computational load is reduced from 118.95 G to 1.49 G, and the mAP is increased from 96.8% to 98%. …”
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1380
Analysing and Forecasting the Energy Consumption of Healthcare Facilities in the Short and Medium Term. A Case Study
Published 2024-01-01“…The approach adopted for predicting hospital energy consumption involves five steps: data acquisition, data pre-processing, data prediction, hyper-parameter optimisation and feature analysis. Furthermore, all regression algorithms have undergone hyper-parameter optimisation using random search, grid search and Bayesian optimisation to achieve the minimum prediction errors represented by different metrics. …”
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