• 제목/요약/키워드: Deep-Learning

검색결과 5,450건 처리시간 0.029초

Forecasting Fish Import Using Deep Learning: A Comprehensive Analysis of Two Different Fish Varieties in South Korea

  • Abhishek Chaudhary;Sunoh Choi
    • 스마트미디어저널
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    • 제12권11호
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    • pp.134-144
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    • 2023
  • Nowadays, Deep Learning (DL) technology is being used in several government departments. South Korea imports a lot of seafood. If the demand for fishery products is not accurately predicted, then there will be a shortage of fishery products and the price of the fishery product may rise sharply. So, South Korea's Ministry of Ocean and Fisheries is attempting to accurately predict seafood imports using deep learning. This paper introduces the solution for the fish import prediction in South Korea using the Long Short-Term Memory (LSTM) method. It was found that there was a huge gap between the sum of consumption and export against the sum of production especially in the case of two species that are Hairtail and Pollock. An import prediction is suggested in this research to fill the gap with some advanced Deep Learning methods. This research focuses on import prediction using Machine Learning (ML) and Deep Learning methods to predict the import amount more precisely. For the prediction, two Deep Learning methods were chosen which are Artificial Neural Network (ANN) and Long Short-Term Memory (LSTM). Moreover, the Machine Learning method was also selected for the comparison between the DL and ML. Root Mean Square Error (RMSE) was selected for the error measurement which shows the difference between the predicted and actual values. The results obtained were compared with the average RMSE scores and in terms of percentage. It was found that the LSTM has the lowest RMSE score which showed the prediction with higher accuracy. Meanwhile, ML's RMSE score was higher which shows lower accuracy in prediction. Moreover, Google Trend Search data was used as a new feature to find its impact on prediction outcomes. It was found that it had a positive impact on results as the RMSE values were lowered, increasing the accuracy of the prediction.

딥러닝 모형을 활용한 공공자전거 대여량 예측에 관한 연구 (Forecasting of Rental Demand for Public Bicycles Using a Deep Learning Model)

  • 조근민;이상수;남두희
    • 한국ITS학회 논문지
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    • 제19권3호
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    • pp.28-37
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    • 2020
  • 본 연구는 공공자전거의 대여량을 예측하는 딥러닝 모형을 개발하였다. 이를 위하여 공공자전거 대여량 자료, 기상 자료, 그리고 지하철 이용량 자료를 수집하였다. 지수평활 모형, ARIMA 모형과 LSTM기반의 딥러닝 모형을 구축한 후 MSE와 MAE 평가 지표를 사용하여 예측 오차를 비교·평가하였다. 평가 결과, 지수평활 모형으로 MSE 348.74, MAE 14.15 값이 산출되었다. ARIMA 모형으로 MSE 170.10, MAE 9.30 값을 얻었다. 그리고 딥러닝 모형으로 MSE 120.22, MAE 6.76 값이 산출되었다. 지수평활 모형의 값과 비교하여 ARIMA 모형의 MSE는 51%, MAE는 34% 감소하였다. 그리고 딥러닝 모형의 MSE는 66%, MAE는 52% 감소하여 딥러닝 모형의 오차가 가장 적은 것으로 파악되었다. 이러한 결과로부터 공공자전거 대여량 예측 분야에서 딥러닝 모형의 적용시 예측 오차를 크게 감소시킬 수 있을 것으로 판단된다.

A Lightweight Deep Learning Model for Text Detection in Fashion Design Sketch Images for Digital Transformation

  • Ju-Seok Shin;Hyun-Woo Kang
    • 한국컴퓨터정보학회논문지
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    • 제28권10호
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    • pp.17-25
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    • 2023
  • 본 논문에서는 의류 디자인 도면 이미지의 글자 검출을 위한 경량화된 딥러닝 네트워크를 제안하였다. 최근 의류 디자인 산업에서 Digital Transformation의 중요성이 대두되면서, 디지털 도구를 활용한 의류 디자인 도면 작성이 강조되고 있으며, 디지털화된 의류 디자인 도면의 활용 가능성을 고려할 때, 도면에서 글자 검출과 인식이 중요한 첫 단계로 간주된다. 이 연구에서는 기존의 글자 검출 딥러닝 모델을 기반으로 의류 도면 이미지의 특수성을 고려하여 경량화된 네트워크를 설계하였으며, 별도로 수집한 의류 도면 데이터 셋을 추가하여 딥러닝 모델을 학습시켰다. 실험 결과, 제안한 딥러닝 모델은 의류 도면 이미지에서 기존 글자 검출 모델보다 약 20% 높은 성능을 보였다. 따라서 이 논문은 딥러닝 모델의 최적화와 특수한 글자 정보 검출 등의 연구를 통해 의류 디자인 분야에서의 Digital Transformation에 기여할 것으로 기대한다.

딥러닝 기반의 식생 모니터링 가능성 평가 (Evaluation of the Feasibility of Deep Learning for Vegetation Monitoring)

  • 김동우;손승우
    • 한국환경복원기술학회지
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    • 제26권6호
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    • pp.85-96
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    • 2023
  • This study proposes a method for forest vegetation monitoring using high-resolution aerial imagery captured by unmanned aerial vehicles(UAV) and deep learning technology. The research site was selected in the forested area of Mountain Dogo, Asan City, Chungcheongnam-do, and the target species for monitoring included Pinus densiflora, Quercus mongolica, and Quercus acutissima. To classify vegetation species at the pixel level in UAV imagery based on characteristics such as leaf shape, size, and color, the study employed the semantic segmentation method using the prominent U-net deep learning model. The research results indicated that it was possible to visually distinguish Pinus densiflora Siebold & Zucc, Quercus mongolica Fisch. ex Ledeb, and Quercus acutissima Carruth in 135 aerial images captured by UAV. Out of these, 104 images were used as training data for the deep learning model, while 31 images were used for inference. The optimization of the deep learning model resulted in an overall average pixel accuracy of 92.60, with mIoU at 0.80 and FIoU at 0.82, demonstrating the successful construction of a reliable deep learning model. This study is significant as a pilot case for the application of UAV and deep learning to monitor and manage representative species among climate-vulnerable vegetation, including Pinus densiflora, Quercus mongolica, and Quercus acutissima. It is expected that in the future, UAV and deep learning models can be applied to a variety of vegetation species to better address forest management.

Deep Learning-Based Inverse Design for Engineering Systems: A Study on Supervised and Unsupervised Learning Models

  • Seong-Sin Kim
    • International Journal of Internet, Broadcasting and Communication
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    • 제16권2호
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    • pp.127-135
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    • 2024
  • Recent studies have shown that inverse design using deep learning has the potential to rapidly generate the optimal design that satisfies the target performance without the need for iterative optimization processes. Unlike traditional methods, deep learning allows the network to rapidly generate a large number of solution candidates for the same objective after a single training, and enables the generation of diverse designs tailored to the objectives of inverse design. These inverse design techniques are expected to significantly enhance the efficiency and innovation of design processes in various fields such as aerospace, biology, medical, and engineering. We analyzes inverse design models that are mainly utilized in the nano and chemical fields, and proposes inverse design models based on supervised and unsupervised learning that can be applied to the engineering system. It is expected to present the possibility of effectively applying inverse design methodologies to the design optimization problem in the field of engineering according to each specific objective.

희소표현법과 딥러닝을 이용한 초고해상도 기반의 얼굴 인식 (Face recognition Based on Super-resolution Method Using Sparse Representation and Deep Learning)

  • 권오설
    • 한국멀티미디어학회논문지
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    • 제21권2호
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    • pp.173-180
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    • 2018
  • This paper proposes a method to improve the performance of face recognition via super-resolution method using sparse representation and deep learning from low-resolution facial images. Recently, there have been many researches on ultra-high-resolution images using deep learning techniques, but studies are still under way in real-time face recognition. In this paper, we combine the sparse representation and deep learning to generate super-resolution images to improve the performance of face recognition. We have also improved the processing speed by designing in parallel structure when applying sparse representation. Finally, experimental results show that the proposed method is superior to conventional methods on various images.

딥러닝 모델 병렬 처리 (Deep Learning Model Parallelism)

  • 박유미;안신영;임은지;최용석;우영춘;최완
    • 전자통신동향분석
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    • 제33권4호
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    • pp.1-13
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    • 2018
  • Deep learning (DL) models have been widely applied to AI applications such image recognition and language translation with big data. Recently, DL models have becomes larger and more complicated, and have merged together. For the accelerated training of a large-scale deep learning model, model parallelism that partitions the model parameters for non-shared parallel access and updates across multiple machines was provided by a few distributed deep learning frameworks. Model parallelism as a training acceleration method, however, is not as commonly used as data parallelism owing to the difficulty of efficient model parallelism. This paper provides a comprehensive survey of the state of the art in model parallelism by comparing the implementation technologies in several deep learning frameworks that support model parallelism, and suggests a future research directions for improving model parallelism technology.

A Deep Learning Approach for Classification of Cloud Image Patches on Small Datasets

  • Phung, Van Hiep;Rhee, Eun Joo
    • Journal of information and communication convergence engineering
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    • 제16권3호
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    • pp.173-178
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    • 2018
  • Accurate classification of cloud images is a challenging task. Almost all the existing methods rely on hand-crafted feature extraction. Their limitation is low discriminative power. In the recent years, deep learning with convolution neural networks (CNNs), which can auto extract features, has achieved promising results in many computer vision and image understanding fields. However, deep learning approaches usually need large datasets. This paper proposes a deep learning approach for classification of cloud image patches on small datasets. First, we design a suitable deep learning model for small datasets using a CNN, and then we apply data augmentation and dropout regularization techniques to increase the generalization of the model. The experiments for the proposed approach were performed on SWIMCAT small dataset with k-fold cross-validation. The experimental results demonstrated perfect classification accuracy for most classes on every fold, and confirmed both the high accuracy and the robustness of the proposed model.

지능형 헤드헌팅 서비스를 위한 협업 딥 러닝 기반의 중개 채용 서비스 시스템 설계 및 구현 (Design and Implementation of Agent-Recruitment Service System based on Collaborative Deep Learning for the Intelligent Head Hunting Service)

  • 이현호;이원진
    • 한국멀티미디어학회논문지
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    • 제23권2호
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    • pp.343-350
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    • 2020
  • In the era of the Fourth Industrial Revolution in the digital revolution is taking place, various attempts have been made to provide various contents in a digital environment. In this paper, agent-recruitment service system based on collaborative deep learning is proposed for the intelligent head hunting service. The service system is improved from previous research [7] using collaborative deep learning for more reliable recommendation results. The Collaborative deep learning is a hybrid recommendation algorithm using "Recurrent Neural Network(RNN)" specialized for exponential calculation, "collaborative filtering" which is traditional recommendation filtering methods, and "KNN-Clustering" for similar user analysis. The proposed service system can expect more reliable recommendation results than previous research and showed high satisfaction in user survey for verification.

CNN 기반 딥러닝을 이용한 임베디드 리눅스 양각 문자 인식 시스템 구현 (An Implementation of Embedded Linux System for Embossed Digit Recognition using CNN based Deep Learning)

  • 유연승;김정길;홍충표
    • 반도체디스플레이기술학회지
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    • 제19권2호
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    • pp.100-104
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    • 2020
  • Over the past several years, deep learning has been widely used for feature extraction in image and video for various applications such as object classification and facial recognition. This paper introduces an implantation of embedded Linux system for embossed digits recognition using CNN based deep learning methods. For this purpose, we implemented a coin recognition system based on deep learning with the Keras open source library on Raspberry PI. The performance evaluation has been made with the success rate of coin classification using the images captured with ultra-wide angle camera on Raspberry PI. The simulation result shows 98% of the success rate on average.