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Building Segmentation from Remote Sensing Image via DWT Attention Networks
The attention mechanism has been widely used and achieved good results in many visual tasks. But the calculations of attention mechanism in vision tasks consume huge spaces and times, which is the obvious disadvantage of this method. In order to ...
Reconstructing 3D Shapes as an Union of Boxes from Multi-View Images
The task of reconstructing object shapes from input images has become increasingly important in various fields, such as computer vision, robotics, augmented reality, video games, and autonomous vehicles. While approaches for reconstructing shapes with ...
Three-Dimensional Sphere Recognition and Tracking Based on YOLO
Traditional art exhibitions are usually dominated by relatively static displays such as text, pictures and common multimedia technology. Subject to technical limitations, the exhibition means are relatively simple and the content is relatively thin, ...
LLFormer: An Efficient and Real-time LiDAR Lane Detection Method based on Transformer
Lane detection has been one of the most important functions in the autonomous driving perception module. Most of the current research require complex post-processing and curve fitting processes before they can be used by subsequent regulation modules. ...
Frequency-Split Inception Transformer for Image Super-Resolution
Transformer models have shown remarkable effectiveness in capturing long-range dependencies and extracting features for single image super-resolution. However, their deployment on edge devices is hindered by their high computational complexity. To ...
MSYOLOF: Multi-input-single-output encoder network with tripartite feature enhancement for object detection
Object detection under one-level feature is a challenging task, which requires that object representations at different scales can be extracted on a single feature map. However, existing object detectors using a one-level feature suffer from inadequate ...
Exploration of transfer learning capability of multilingual models for text classification
The use of multilingual models for natural language processing is becoming increasingly popular in industrial and business applications, particularly in multilingual societies. In this study, we investigate the transfer learning capabilities of ...
Policy Updating Methods of Q Learning for Two Player Bargaining Game
Reinforcement learning algorithms have been used to discover the strategies in game theory. This study investigates whether Q learning, one of the classic reinforcement learning methods, is capable of training bargaining players via self-play, a ...
Multi-population Runge Kutta Optimizer Based on Gaussian Disturbance
To address the lack of development capacity of Runge Kutta Optimizer, we propose the Multi-population Runge Kutta algorithm Based on Gaussian disturbance(MPRUN). In the algorithm, the population is divided into subgroups. The individuals in the ...
Survey of the Formal Verification of Operating Systems in Power Monitoring System
The formal verification of the operating systems in power monitoring system is an important means to ensure the security of the operating system in power monitoring system. This paper introduces the verification principles and framework of formal ...
A study on the line loss index of a substation area based on cooperative games with multiple influencing factors
The line loss rate varies significantly among different substation areas due to diverse influencing factors. Consequently, a study is conducted to investigate the line loss index of a substation area by employing a cooperative game approach that ...
An Improved Self-Adaptive Teaching-learning Based Optimization for Multi-area Economic Dispatch
The multi-area economic dispatch (MAED) is a hot and vital research topic for energy saving and emission reduction. Multi-areal economic dispatch refers to the most economical distribution of load requirement among the output units under the premise of ...
Identification-Dissemination-Warning: Algorithm and Prediction of Early Warning of Network Public Opinion
In order to better monitor public opinion, this study reviews how the existing thesis work theoretically and practically from the interdisciplinary perspective of communication and computer science and then proposes a new vision under the framework of “...
CapsNet-based drift detection in data stream mining
For data streams, drift detection methods warn and detect the changes in patterns over time. For example, in smart manufacturing, many data streams are generated from sensors that monitor the real-time operation of manufacturing. Drift detection can be ...
An early warning system for height limit based on multi-sensor information fusion
With the continuous development of social economy, infrastructure such as highways and bridges continues to develop, and overloaded vehicles are repeatedly prohibited. Therefore, many places have set up "height limit gantry frames" at the entrances of ...
Fiber Recognition Algorithm Based on Improved Mask RCNN
In response to the application requirements of identifying and classifying multiple types of fibers, this paper proposes a fiber recognition algorithm based on improved Mask RCNN to achieve recognition and classification of multiple types of fibers, ...
Network equipment recommended placement based on entropy weight method and improved ideal point method distribution scheme design
At present, data center security and energy consumption have been continuously concerned and discussed. There are some new technology to reduce energy consumption of data center, but few studies focus on make full use of the resources of the existing ...
Research on vehicle spare parts demand forecast based on XGBoost-LightGBM
Vehicle spare parts demand forecasting is crucial for optimizing inventory and improving maintenance efficiency. This study aims to explore a vehicle spare parts demand forecasting method based on the fusion of XGBoost and LightGBM models to enhance ...
Index Terms
- Proceedings of the 2023 5th International Conference on Pattern Recognition and Intelligent Systems