• 제목/요약/키워드: YOLOv5

검색결과 169건 처리시간 0.026초

수중영상을 이용한 저서성 해양무척추동물의 실시간 객체 탐지: YOLO 모델과 Transformer 모델의 비교평가 (Realtime Detection of Benthic Marine Invertebrates from Underwater Images: A Comparison betweenYOLO and Transformer Models)

  • 박강현;박수호;장선웅;공신우;곽지우;이양원
    • 대한원격탐사학회지
    • /
    • 제39권5_3호
    • /
    • pp.909-919
    • /
    • 2023
  • Benthic marine invertebrates, the invertebrates living on the bottom of the ocean, are an essential component of the marine ecosystem, but excessive reproduction of invertebrate grazers or pirate creatures can cause damage to the coastal fishery ecosystem. In this study, we compared and evaluated You Only Look Once Version 7 (YOLOv7), the most widely used deep learning model for real-time object detection, and detection tansformer (DETR), a transformer-based model, using underwater images for benthic marine invertebratesin the coasts of South Korea. YOLOv7 showed a mean average precision at 0.5 (mAP@0.5) of 0.899, and DETR showed an mAP@0.5 of 0.862, which implies that YOLOv7 is more appropriate for object detection of various sizes. This is because YOLOv7 generates the bounding boxes at multiple scales that can help detect small objects. Both models had a processing speed of more than 30 frames persecond (FPS),so it is expected that real-time object detection from the images provided by divers and underwater drones will be possible. The proposed method can be used to prevent and restore damage to coastal fisheries ecosystems, such as rescuing invertebrate grazers and creating sea forests to prevent ocean desertification.

Real-Time Comprehensive Assistance for Visually Impaired Navigation

  • Amal Al-Shahrani;Amjad Alghamdi;Areej Alqurashi;Raghad Alzahrani;Nuha imam
    • International Journal of Computer Science & Network Security
    • /
    • 제24권5호
    • /
    • pp.1-10
    • /
    • 2024
  • Individuals with visual impairments face numerous challenges in their daily lives, with navigating streets and public spaces being particularly daunting. The inability to identify safe crossing locations and assess the feasibility of crossing significantly restricts their mobility and independence. Globally, an estimated 285 million people suffer from visual impairment, with 39 million categorized as blind and 246 million as visually impaired, according to the World Health Organization. In Saudi Arabia alone, there are approximately 159 thousand blind individuals, as per unofficial statistics. The profound impact of visual impairments on daily activities underscores the urgent need for solutions to improve mobility and enhance safety. This study aims to address this pressing issue by leveraging computer vision and deep learning techniques to enhance object detection capabilities. Two models were trained to detect objects: one focused on street crossing obstacles, and the other aimed to search for objects. The first model was trained on a dataset comprising 5283 images of road obstacles and traffic signals, annotated to create a labeled dataset. Subsequently, it was trained using the YOLOv8 and YOLOv5 models, with YOLOv5 achieving a satisfactory accuracy of 84%. The second model was trained on the COCO dataset using YOLOv5, yielding an impressive accuracy of 94%. By improving object detection capabilities through advanced technology, this research seeks to empower individuals with visual impairments, enhancing their mobility, independence, and overall quality of life.

YOLOv4 기반의 소형 물체탐지기법을 이용한 건설도면 내 철강 자재 문자 검출 및 인식기법 (Character Detection and Recognition of Steel Materials in Construction Drawings using YOLOv4-based Small Object Detection Techniques)

  • 심지우;우희조;김윤환;김응태
    • 방송공학회논문지
    • /
    • 제27권3호
    • /
    • pp.391-401
    • /
    • 2022
  • 최근 딥러닝 기반의 객체 검출 및 인식 연구가 발전해가면서 산업 및 실생활에 적용되는 범위가 넓어지고 있다. 건설 분야에도 딥러닝 기반의 시스템이 도입되고 있지만 아직은 미온적이다. 건설 도면에서 자재 산출이 수작업으로 이뤄지고 있어 많은 소요시간과 부정확한 적산 결과로 잘못된 물량산출의 거래가 생길 수 있다. 이를 해결하기 위해서 빠르고 정확한 자동 도면 인식시스템이 필요하다. 따라서 본 논문은 건설도면 내 철강 자재를 검출하고 인식하는 인공지능기반 자동 도면 인식 적산 시스템을 제안한다. 빠른 속도의 YOLOv4 기반에 소형 객체 검출성능을 향상하기 위한 복제 방식의 데이터 증강기법과 공간집중 모듈을 적용하였다. 검출한 철강 자재 영역을 문자 인식한 결과를 토대로 철강 자재를 적산한다. 실험 결과 제안한 방식은 기존 YOLOv4 대비 정확도와 정밀도를 각각 1.8%, 16% 증가시켰다. 제안된 방식의 Precision은 0.938, Recall은 1, AP0.5는 99.4%, AP0.5:0.95 68.8%의 향상된 결과를 얻었다. 문자 인식은 기존 데이터를 사용한 인식률 75.6%에 비해 건설도면에 사용되는 폰트에 맞는 데이터 세트를 구성하여 학습한 결과 99.9%의 인식률을 얻었다. 한 이미지 당 평균 소요시간은 검출 단계는 0.013초, 문자 인식은 0.65초, 적산 단계는 0.16초로 총 0.84초의 결과를 얻었다.

A Lightweight Pedestrian Intrusion Detection and Warning Method for Intelligent Traffic Security

  • Yan, Xinyun;He, Zhengran;Huang, Youxiang;Xu, Xiaohu;Wang, Jie;Zhou, Xiaofeng;Wang, Chishe;Lu, Zhiyi
    • KSII Transactions on Internet and Information Systems (TIIS)
    • /
    • 제16권12호
    • /
    • pp.3904-3922
    • /
    • 2022
  • As a research hotspot, pedestrian detection has a wide range of applications in the field of computer vision in recent years. However, current pedestrian detection methods have problems such as insufficient detection accuracy and large models that are not suitable for large-scale deployment. In view of these problems mentioned above, a lightweight pedestrian detection and early warning method using a new model called you only look once (Yolov5) is proposed in this paper, which utilizing advantages of Yolov5s model to achieve accurate and fast pedestrian recognition. In addition, this paper also optimizes the loss function of the batch normalization (BN) layer. After sparsification, pruning and fine-tuning, got a lot of optimization, the size of the model on the edge of the computing power is lower equipment can be deployed. Finally, from the experimental data presented in this paper, under the training of the road pedestrian dataset that we collected and processed independently, the Yolov5s model has certain advantages in terms of precision and other indicators compared with traditional single shot multiBox detector (SSD) model and fast region-convolutional neural network (Fast R-CNN) model. After pruning and lightweight, the size of training model is greatly reduced without a significant reduction in accuracy, and the final precision reaches 87%, while the model size is reduced to 7,723 KB.

딥러닝과 교통정보 Open API를 이용한 시각장애인 버스 탑승 보조 시스템에서 딥러닝 알고리즘 성능 비교 (Comparison of Deep Learning Algorithm in Bus Boarding Assistance System for the Visually Impaired using Deep Learning and Traffic Information Open API)

  • 김태홍;여길수;정세준;유윤섭
    • 한국정보통신학회:학술대회논문집
    • /
    • 한국정보통신학회 2021년도 추계학술대회
    • /
    • pp.388-390
    • /
    • 2021
  • 본 논문은 키패드, 도트매트릭스, 라이다센서, NFC 리더기를 부착한 임베디드 보드와 공공데이터포털 Open API 시스템과 딥러닝 알고리즘(YOLOv5)를 사용하여 시각장애인의 버스 탑승에 도움을 줄 수 있는 시스템을 소개한다. 이용자는 NFC 리더기 및 키패드를 통해 희망하는 버스번호를 입력한 뒤, Open API 실시간 데이터를 통해 해당 버스의 위치 및 도착예정시간 정보를 시스템에 입력해놓은 음성 출력을 통해 얻는다. 또한 도트매트릭스로 버스번호를 출력하여 기사와의 상호작용을 대기함과 동시에 딥러닝 알고리즘(YOLOv5)은 정차하는 버스 번호를 실시간 인식하고 거리센서로 버스와의 거리를 감지하여 정차유무정보를 확인, 전달하는 시스템을 제안한다.

  • PDF

Designing a smart safe transportation system within a university using object detection algorithm

  • Na Young Lee;Geon Lee;Min Seop Lee;Yun Jung Hong;In-Beom Yang;Jiyoung Woo
    • 한국컴퓨터정보학회논문지
    • /
    • 제29권1호
    • /
    • pp.51-59
    • /
    • 2024
  • 교내 보행자 교통사고를 예방하고 안전한 환경을 조성하기 위해 교내 위험 구간을 설정하고, 해당 구역에서 차량 속도 측정 및 교차로 횡단보도에서의 차량과 보행자 상호작용을 실시간으로 감지하는 시스템을 설계하였다. YOLOv5s 모델과 Deep SORT 방법을 이용하여 구간 속도 측정 및 객체 추적을 수행하고, 횡단보도 구역에서는 YOLOv5s 객체 탐지 모델을 활용하여 보행자와 차량을 구분하는 조건별 출력 시스템을 개발하여 실시간으로 구동이 됨을 검증하였다. 이 시스템은 저렴한 비용으로 일반 스마트폰 카메라나 화상용 카메라를 활용하여 설치할 수 있으며, 대학 캠퍼스뿐만 아니라 비슷한 문제 지역에 도입하여 차량과 보행자의 안전을 위한 해결 방안으로 기대된다.

A deep learning approach to permanent tooth germ detection on pediatric panoramic radiographs

  • Kaya, Emine;Gunec, Huseyin Gurkan;Aydin, Kader Cesur;Urkmez, Elif Seyda;Duranay, Recep;Ates, Hasan Fehmi
    • Imaging Science in Dentistry
    • /
    • 제52권3호
    • /
    • pp.275-281
    • /
    • 2022
  • Purpose: The aim of this study was to assess the performance of a deep learning system for permanent tooth germ detection on pediatric panoramic radiographs. Materials and Methods: In total, 4518 anonymized panoramic radiographs of children between 5 and 13 years of age were collected. YOLOv4, a convolutional neural network (CNN)-based object detection model, was used to automatically detect permanent tooth germs. Panoramic images of children processed in LabelImg were trained and tested in the YOLOv4 algorithm. True-positive, false-positive, and false-negative rates were calculated. A confusion matrix was used to evaluate the performance of the model. Results: The YOLOv4 model, which detected permanent tooth germs on pediatric panoramic radiographs, provided an average precision value of 94.16% and an F1 value of 0.90, indicating a high level of significance. The average YOLOv4 inference time was 90 ms. Conclusion: The detection of permanent tooth germs on pediatric panoramic X-rays using a deep learning-based approach may facilitate the early diagnosis of tooth deficiency or supernumerary teeth and help dental practitioners find more accurate treatment options while saving time and effort

Automatic Detection of Dead Trees Based on Lightweight YOLOv4 and UAV Imagery

  • Yuanhang Jin;Maolin Xu;Jiayuan Zheng
    • Journal of Information Processing Systems
    • /
    • 제19권5호
    • /
    • pp.614-630
    • /
    • 2023
  • Dead trees significantly impact forest production and the ecological environment and pose constraints to the sustainable development of forests. A lightweight YOLOv4 dead tree detection algorithm based on unmanned aerial vehicle images is proposed to address current limitations in dead tree detection that rely mainly on inefficient, unsafe and easy-to-miss manual inspections. An improved logarithmic transformation method was developed in data pre-processing to display tree features in the shadows. For the model structure, the original CSPDarkNet-53 backbone feature extraction network was replaced by MobileNetV3. Some of the standard convolutional blocks in the original extraction network were replaced by depthwise separable convolution blocks. The new ReLU6 activation function replaced the original LeakyReLU activation function to make the network more robust for low-precision computations. The K-means++ clustering method was also integrated to generate anchor boxes that are more suitable for the dataset. The experimental results show that the improved algorithm achieved an accuracy of 97.33%, higher than other methods. The detection speed of the proposed approach is higher than that of YOLOv4, improving the efficiency and accuracy of the detection process.

YOLOv5 based Anomaly Detection for Subway Safety Management Using Dilated Convolution

  • Nusrat Jahan Tahira;Ju-Ryong Park;Seung-Jin Lim;Jang-Sik Park
    • 한국산업융합학회 논문집
    • /
    • 제26권2_1호
    • /
    • pp.217-223
    • /
    • 2023
  • With the rapid advancement of technologies, need for different research fields where this technology can be used is also increasing. One of the most researched topic in computer vision is object detection, which has widely been implemented in various fields which include healthcare, video surveillance and education. The main goal of object detection is to identify and categorize all the objects in a target environment. Specifically, methods of object detection consist of a variety of significant techniq ues, such as image processing and patterns recognition. Anomaly detection is a part of object detection, anomalies can be found various scenarios for example crowded places such as subway stations. An abnormal event can be assumed as a variation from the conventional scene. Since the abnormal event does not occur frequently, the distribution of normal and abnormal events is thoroughly imbalanced. In terms of public safety, abnormal events should be avoided and therefore immediate action need to be taken. When abnormal events occur in certain places, real time detection is required to prevent and protect the safety of the people. To solve the above problems, we propose a modified YOLOv5 object detection algorithm by implementing dilated convolutional layers which achieved 97% mAP50 compared to other five different models of YOLOv5. In addition to this, we also created a simple mobile application to avail the abnormal event detection on mobile phones.

딥러닝 모델을 적용한 장애인 주차구역 단속시스템의 개발 (Development of Disabled Parking System Using Deep Learning Model)

  • 이지원;이동진;장종욱;장성진
    • 한국정보통신학회:학술대회논문집
    • /
    • 한국정보통신학회 2021년도 춘계학술대회
    • /
    • pp.175-177
    • /
    • 2021
  • 장애인 주차구역은 보행장애인을 위한 주차시설로써, 장애인의 보행 안전 통로를 확보하기 위한 주차공간이다. 하지만 장애인 전용구역에 대한 사회적인 인식 부족으로 실제 주차구역을 이용해야 하는 장애인의 이용이 제한되고 불법 주차 행위 및 주차 방해 행위 등 위반사례들이 매년 급증하고 있다. 따라서, 본 연구에서는 장애인 주차 구역의 불법 주차 차량 및 주차공간 내부에서 주차를 방해하는 행위를 개선하기 위해 딥러닝 객체 인식 모델인 YOLOv5 모델을 적용한 장애인 주차구역 불법행위 단속시스템을 제안한다.

  • PDF