• 제목/요약/키워드: Dataset Training

검색결과 652건 처리시간 0.031초

Temporal matching prior network for vehicle license plate detection and recognition in videos

  • Yoo, Seok Bong;Han, Mikyong
    • ETRI Journal
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    • 제42권3호
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    • pp.411-419
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    • 2020
  • In real-world intelligent transportation systems, accuracy in vehicle license plate detection and recognition is considered quite critical. Many algorithms have been proposed for still images, but their accuracy on actual videos is not satisfactory. This stems from several problematic conditions in videos, such as vehicle motion blur, variety in viewpoints, outliers, and the lack of publicly available video datasets. In this study, we focus on these challenges and propose a license plate detection and recognition scheme for videos based on a temporal matching prior network. Specifically, to improve the robustness of detection and recognition accuracy in the presence of motion blur and outliers, forward and bidirectional matching priors between consecutive frames are properly combined with layer structures specifically designed for plate detection. We also built our own video dataset for the deep training of the proposed network. During network training, we perform data augmentation based on image rotation to increase robustness regarding the various viewpoints in videos.

Triplet CNN과 학습 데이터 합성 기반 비디오 안정화기 연구 (Study on the Video Stabilizer based on a Triplet CNN and Training Dataset Synthesis)

  • 양병호;이명진
    • 방송공학회논문지
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    • 제25권3호
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    • pp.428-438
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    • 2020
  • 영상 내 흔들림은 비디오의 가시성을 떨어뜨리고 영상처리나 영상압축의 효율을 저하시킨다. 최근 디지털 영상처리 분야에 딥러닝이 본격 적용되고 있으나, 비디오 안정화 분야에 딥러닝 적용은 아직 초기 단계이다. 본 논문에서는 Wobbling 왜곡 경감을 위한 triplet 형태의 CNN 기반 비디오 안정화기 구조를 제안하고, 비디오 안정화기 학습을 위한 학습데이터 합성 방법을 제안한다. 제안한 CNN 기반 비디오 안정화기는 기존 딥러닝 기반 비디오 안정화기와 비교되었으며, Wobbling 왜곡은 감소하고 더 안정적인 학습이 이루어지는 결과를 얻었다.

신경회로망을 응용한 현가장치의 폐회로 시스템 규명 (Empirical Closed Loop Modeling of a Suspension System Using Neural Network)

  • Kim, I.Y.;Chong, K.T.;Hong, D.P.
    • 한국정밀공학회지
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    • 제14권7호
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    • pp.29-38
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    • 1997
  • A closed-loop system modeling of an active/semiactive suspension system has been accomplished through an artificial neural network. A 7DOF full model as a system's equation of motion has been derived and an output feedback linear quadratic regulator has been designed for control purpose. A training set of a sample data has been obtained through a computer simulation. A 7DOF full model with LQR controller simulated under several road conditions such as sinusoidal bumps and rectangular bumps. A general multilayer perceptron neural network is used for dynamic modeling and target outputs are fedback to the a layer. A backpropagation method is used as a training algorithm. Model validation of new dataset have been shown through computer simulations.

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랜덤화 배깅을 이용한 재무 부실화 예측 (Randomized Bagging for Bankruptcy Prediction)

  • 민성환
    • 한국IT서비스학회지
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    • 제15권1호
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    • pp.153-166
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    • 2016
  • Ensemble classification is an approach that combines individually trained classifiers in order to improve prediction accuracy over individual classifiers. Ensemble techniques have been shown to be very effective in improving the generalization ability of the classifier. But base classifiers need to be as accurate and diverse as possible in order to enhance the generalization abilities of an ensemble model. Bagging is one of the most popular ensemble methods. In bagging, the different training data subsets are randomly drawn with replacement from the original training dataset. Base classifiers are trained on the different bootstrap samples. In this study we proposed a new bagging variant ensemble model, Randomized Bagging (RBagging) for improving the standard bagging ensemble model. The proposed model was applied to the bankruptcy prediction problem using a real data set and the results were compared with those of the other models. The experimental results showed that the proposed model outperformed the standard bagging model.

GAN을 이용한 식물 병해 이미지 합성 데이터 증강 (Synthetic Data Augmentation for Plant Disease Image Generation using GAN)

  • 나즈키 하십;이재환;윤숙;박동선
    • 한국콘텐츠학회:학술대회논문집
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    • 한국콘텐츠학회 2018년도 춘계 종합학술대회 논문집
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    • pp.459-460
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    • 2018
  • In this paper, we present a data augmentation method that generates synthetic plant disease images using Generative Adversarial Networks (GANs). We propose a training scheme that first uses classical data augmentation techniques to enlarge the training set and then further enlarges the data size and its diversity by applying GAN techniques for synthetic data augmentation. Our method is demonstrated on a limited dataset of 2789 images of tomato plant diseases (Gray mold, Canker, Leaf mold, Plague, Leaf miner, Whitefly etc.).

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A Federated Multi-Task Learning Model Based on Adaptive Distributed Data Latent Correlation Analysis

  • Wu, Shengbin;Wang, Yibai
    • Journal of Information Processing Systems
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    • 제17권3호
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    • pp.441-452
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    • 2021
  • Federated learning provides an efficient integrated model for distributed data, allowing the local training of different data. Meanwhile, the goal of multi-task learning is to simultaneously establish models for multiple related tasks, and to obtain the underlying main structure. However, traditional federated multi-task learning models not only have strict requirements for the data distribution, but also demand large amounts of calculation and have slow convergence, which hindered their promotion in many fields. In our work, we apply the rank constraint on weight vectors of the multi-task learning model to adaptively adjust the task's similarity learning, according to the distribution of federal node data. The proposed model has a general framework for solving optimal solutions, which can be used to deal with various data types. Experiments show that our model has achieved the best results in different dataset. Notably, our model can still obtain stable results in datasets with large distribution differences. In addition, compared with traditional federated multi-task learning models, our algorithm is able to converge on a local optimal solution within limited training iterations.

마이크로프로세서 기반의 얼굴 마스크 감지 (Face-Mask Detection with Micro processor)

  • Lim, Hyunkeun;Ryoo, Sooyoung;Jung, Hoekyung
    • 한국정보통신학회논문지
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    • 제25권3호
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    • pp.490-493
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    • 2021
  • This paper proposes an embedded system that detects mask and face recognition based on a microprocessor instead of Nvidia Jetson Board what is popular development kit. We use a class of efficient models called Mobilenets for mobile and embedded vision applications. MobileNets are based on a streamlined architechture that uses depthwise separable convolutions to build light weight deep neural networks. The device used a Maix development board with CNN hardware acceleration function, and the training model used MobileNet_V2 based SSD(Single Shot Multibox Detector) optimized for mobile devices. To make training model, 7553 face data from Kaggle are used. As a result of test dataset, the AUC (Area Under The Curve) value is as high as 0.98.

3차원 의료 영상의 영역 분할을 위한 효율적인 데이터 보강 방법 (An Efficient Data Augmentation for 3D Medical Image Segmentation)

  • 박상근
    • 융복합기술연구소 논문집
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    • 제11권1호
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    • pp.1-5
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    • 2021
  • Deep learning based methods achieve state-of-the-art accuracy, however, they typically rely on supervised training with large labeled datasets. It is known in many medical applications that labeling medical images requires significant expertise and much time, and typical hand-tuned approaches for data augmentation fail to capture the complex variations in such images. This paper proposes a 3D image augmentation method to overcome these difficulties. It allows us to enrich diversity of training data samples that is essential in medical image segmentation tasks, thus reducing the data overfitting problem caused by the fact the scale of medical image dataset is typically smaller. Our numerical experiments demonstrate that the proposed approach provides significant improvements over state-of-the-art methods for 3D medical image segmentation.

Performance Evaluation of a Feature-Importance-based Feature Selection Method for Time Series Prediction

  • Hyun, Ahn
    • Journal of information and communication convergence engineering
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    • 제21권1호
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    • pp.82-89
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    • 2023
  • Various machine-learning models may yield high predictive power for massive time series for time series prediction. However, these models are prone to instability in terms of computational cost because of the high dimensionality of the feature space and nonoptimized hyperparameter settings. Considering the potential risk that model training with a high-dimensional feature set can be time-consuming, we evaluate a feature-importance-based feature selection method to derive a tradeoff between predictive power and computational cost for time series prediction. We used two machine learning techniques for performance evaluation to generate prediction models from a retail sales dataset. First, we ranked the features using impurity- and Local Interpretable Model-agnostic Explanations (LIME) -based feature importance measures in the prediction models. Then, the recursive feature elimination method was applied to eliminate unimportant features sequentially. Consequently, we obtained a subset of features that could lead to reduced model training time while preserving acceptable model performance.

군용물체탐지 연구를 위한 가상 이미지 데이터 생성 (Synthetic Image Generation for Military Vehicle Detection)

  • 오세윤;양훈민
    • 한국군사과학기술학회지
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    • 제26권5호
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    • pp.392-399
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    • 2023
  • This research paper investigates the effectiveness of using computer graphics(CG) based synthetic data for deep learning in military vehicle detection. In particular, we explore the use of synthetic image generation techniques to train deep neural networks for object detection tasks. Our approach involves the generation of a large dataset of synthetic images of military vehicles, which is then used to train a deep learning model. The resulting model is then evaluated on real-world images to measure its effectiveness. Our experimental results show that synthetic training data alone can achieve effective results in object detection. Our findings demonstrate the potential of CG-based synthetic data for deep learning and suggest its value as a tool for training models in a variety of applications, including military vehicle detection.