• 제목/요약/키워드: Model key feature

검색결과 199건 처리시간 0.032초

객체별 특징 벡터 기반 3D 콘텐츠 모델 해싱 (3D Content Model Hashing Based on Object Feature Vector)

  • 이석환;권기룡
    • 전자공학회논문지CI
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    • 제47권6호
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    • pp.75-85
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    • 2010
  • 본 논문에서는 3D 콘텐츠 인증을 위한 객체별 특징 벡터 기반 강인한 3D 모델 해싱을 제안한다. 제안한 3D 모델 해싱에서는 다양한 객체들로 구성된 3D 모델에서 높은 면적을 가지는 특징 객체내의 꼭지점 거리들을 그룹화한다. 그리고 각 그룹들을 치환한 다음, 그룹 계수, 랜덤 변수 키와 이진화 과정에 의하여 최종 해쉬를 생성한다. 이 때 해쉬의 강인성은 객체 그룹별 꼭지점 거리 분포를 그룹 계수에 의하여 향상되고, 해쉬의 유일성은 그룹 계수를 치환 키 및 랜덤변수 키 기반의 이진화 과정에 의하여 향상된다. 실험 결과로부터 제안한 해싱이 다양한 메쉬 공격 및 기하학 공격에 대한 해쉬의 강인성과 유일성을 확인하였다.

Vehicle Detection in Aerial Images Based on Hyper Feature Map in Deep Convolutional Network

  • Shen, Jiaquan;Liu, Ningzhong;Sun, Han;Tao, Xiaoli;Li, Qiangyi
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제13권4호
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    • pp.1989-2011
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    • 2019
  • Vehicle detection based on aerial images is an interesting and challenging research topic. Most of the traditional vehicle detection methods are based on the sliding window search algorithm, but these methods are not sufficient for the extraction of object features, and accompanied with heavy computational costs. Recent studies have shown that convolutional neural network algorithm has made a significant progress in computer vision, especially Faster R-CNN. However, this algorithm mainly detects objects in natural scenes, it is not suitable for detecting small object in aerial view. In this paper, an accurate and effective vehicle detection algorithm based on Faster R-CNN is proposed. Our method fuse a hyperactive feature map network with Eltwise model and Concat model, which is more conducive to the extraction of small object features. Moreover, setting suitable anchor boxes based on the size of the object is used in our model, which also effectively improves the performance of the detection. We evaluate the detection performance of our method on the Munich dataset and our collected dataset, with improvements in accuracy and effectivity compared with other methods. Our model achieves 82.2% in recall rate and 90.2% accuracy rate on Munich dataset, which has increased by 2.5 and 1.3 percentage points respectively over the state-of-the-art methods.

Landslide susceptibility assessment using feature selection-based machine learning models

  • Liu, Lei-Lei;Yang, Can;Wang, Xiao-Mi
    • Geomechanics and Engineering
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    • 제25권1호
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    • pp.1-16
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    • 2021
  • Machine learning models have been widely used for landslide susceptibility assessment (LSA) in recent years. The large number of inputs or conditioning factors for these models, however, can reduce the computation efficiency and increase the difficulty in collecting data. Feature selection is a good tool to address this problem by selecting the most important features among all factors to reduce the size of the input variables. However, two important questions need to be solved: (1) how do feature selection methods affect the performance of machine learning models? and (2) which feature selection method is the most suitable for a given machine learning model? This paper aims to address these two questions by comparing the predictive performance of 13 feature selection-based machine learning (FS-ML) models and 5 ordinary machine learning models on LSA. First, five commonly used machine learning models (i.e., logistic regression, support vector machine, artificial neural network, Gaussian process and random forest) and six typical feature selection methods in the literature are adopted to constitute the proposed models. Then, fifteen conditioning factors are chosen as input variables and 1,017 landslides are used as recorded data. Next, feature selection methods are used to obtain the importance of the conditioning factors to create feature subsets, based on which 13 FS-ML models are constructed. For each of the machine learning models, a best optimized FS-ML model is selected according to the area under curve value. Finally, five optimal FS-ML models are obtained and applied to the LSA of the studied area. The predictive abilities of the FS-ML models on LSA are verified and compared through the receive operating characteristic curve and statistical indicators such as sensitivity, specificity and accuracy. The results showed that different feature selection methods have different effects on the performance of LSA machine learning models. FS-ML models generally outperform the ordinary machine learning models. The best FS-ML model is the recursive feature elimination (RFE) optimized RF, and RFE is an optimal method for feature selection.

An automatic 3D CAD model errors detection method of aircraft structural part for NC machining

  • Huang, Bo;Xu, Changhong;Huang, Rui;Zhang, Shusheng
    • Journal of Computational Design and Engineering
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    • 제2권4호
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    • pp.253-260
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    • 2015
  • Feature-based NC machining, which requires high quality of 3D CAD model, is widely used in machining aircraft structural part. However, there has been little research on how to automatically detect the CAD model errors. As a result, the user has to manually check the errors with great effort before NC programming. This paper proposes an automatic CAD model errors detection approach for aircraft structural part. First, the base faces are identified based on the reference directions corresponding to machining coordinate systems. Then, the CAD models are partitioned into multiple local regions based on the base faces. Finally, the CAD model error types are evaluated based on the heuristic rules. A prototype system based on CATIA has been developed to verify the effectiveness of the proposed approach.

Restoring Turbulent Images Based on an Adaptive Feature-fusion Multi-input-Multi-output Dense U-shaped Network

  • Haiqiang Qian;Leihong Zhang;Dawei Zhang;Kaimin Wang
    • Current Optics and Photonics
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    • 제8권3호
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    • pp.215-224
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    • 2024
  • In medium- and long-range optical imaging systems, atmospheric turbulence causes blurring and distortion of images, resulting in loss of image information. An image-restoration method based on an adaptive feature-fusion multi-input-multi-output (MIMO) dense U-shaped network (Unet) is proposed, to restore a single image degraded by atmospheric turbulence. The network's model is based on the MIMO-Unet framework and incorporates patch-embedding shallow-convolution modules. These modules help in extracting shallow features of images and facilitate the processing of the multi-input dense encoding modules that follow. The combination of these modules improves the model's ability to analyze and extract features effectively. An asymmetric feature-fusion module is utilized to combine encoded features at varying scales, facilitating the feature reconstruction of the subsequent multi-output decoding modules for restoration of turbulence-degraded images. Based on experimental results, the adaptive feature-fusion MIMO dense U-shaped network outperforms traditional restoration methods, CMFNet network models, and standard MIMO-Unet network models, in terms of image-quality restoration. It effectively minimizes geometric deformation and blurring of images.

Generating Radiology Reports via Multi-feature Optimization Transformer

  • Rui Wang;Rong Hua
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제17권10호
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    • pp.2768-2787
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    • 2023
  • As an important research direction of the application of computer science in the medical field, the automatic generation technology of radiology report has attracted wide attention in the academic community. Because the proportion of normal regions in radiology images is much larger than that of abnormal regions, words describing diseases are often masked by other words, resulting in significant feature loss during the calculation process, which affects the quality of generated reports. In addition, the huge difference between visual features and semantic features causes traditional multi-modal fusion method to fail to generate long narrative structures consisting of multiple sentences, which are required for medical reports. To address these challenges, we propose a multi-feature optimization Transformer (MFOT) for generating radiology reports. In detail, a multi-dimensional mapping attention (MDMA) module is designed to encode the visual grid features from different dimensions to reduce the loss of primary features in the encoding process; a feature pre-fusion (FP) module is constructed to enhance the interaction ability between multi-modal features, so as to generate a reasonably structured radiology report; a detail enhanced attention (DEA) module is proposed to enhance the extraction and utilization of key features and reduce the loss of key features. In conclusion, we evaluate the performance of our proposed model against prevailing mainstream models by utilizing widely-recognized radiology report datasets, namely IU X-Ray and MIMIC-CXR. The experimental outcomes demonstrate that our model achieves SOTA performance on both datasets, compared with the base model, the average improvement of six key indicators is 19.9% and 18.0% respectively. These findings substantiate the efficacy of our model in the domain of automated radiology report generation.

형상 특징자 기반 강인성 3D 모델 해싱 기법 (Robust 3D Model Hashing Scheme Based on Shape Feature Descriptor)

  • 이석환;권성근;권기룡
    • 한국멀티미디어학회논문지
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    • 제14권6호
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    • pp.742-751
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    • 2011
  • 본 논문에서는 형상 특징자인 열 커널 인증 (Heat Kernel Signature, HKS)를 기반으로 강인한 3D 모델 해싱을 제안한다. 키와 매개변수에 의존한 형상 특징자 기반 3D 모델 해싱을 제안한다. 제안한 방법에서는 Mesh Laplace 연산자의 고유치와 고유벡터에 의하여 각 꼭지점에 대한 전역 및 국부 타임 HKS 계수를 구한 다음, 이 계수들을 정방형 2D 셀로 군집화한다. 그리고 각 셀에 할당된 HKS 계수 쌍의 거리 가중치 기반으로 정의된 특징계수와 랜덤 계수 키와의 조합에 의하여 중간 해쉬 계수를 생성한 다음, 이진화 과정에 의하여 최종 이진 해쉬를 생성한다. 본 실험에서는 3D 범용 툴을 이용한 다양한 기하하적 공격과 위상학적 공격을 통하여 강인성을 평가하였고, 모델과 키 조합에 대한 해쉬의 유일성을 평가하였다. 또한 인증 범위를 만족히는 공격 세기를 측정함으로써 모델 공간성을 평가하였다. 실험결과로부터 제안한 3D 모델 해싱이 기존 해싱에 비하여 강인성 모델 공간성 및 유일성이 우수함을 확인하였다.

Accurate Stitching for Polygonal Surfaces

  • Zhu, Lifeng;Li, Shengren;Wang, Guoping
    • International Journal of CAD/CAM
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    • 제9권1호
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    • pp.71-77
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    • 2010
  • Various applications, such as mesh composition and model repair, ask for a natural stitching for polygonal surfaces. Unlike the existing algorithms, we make full use of the information from the two feature lines to be stitched up, and present an accurate stitching method for polygonal surfaces, which minimizes the error between the feature lines. Given two directional polylines as the feature lines on polygonal surfaces, we modify the general placement method for points matching and arrive at a closed-form solution for optimal rotation and translation between the polylines. Following calculating out the stitching line, a local surface optimization method is designed and employed for postprocess in order to gain a natural blending of the stitching region.

로봇시스템에서 작은 마커 인식을 하기 위한 사물 감지 어텐션 모델 (Small Marker Detection with Attention Model in Robotic Applications)

  • 김민재;문형필
    • 로봇학회논문지
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    • 제17권4호
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    • pp.425-430
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    • 2022
  • As robots are considered one of the mainstream digital transformations, robots with machine vision becomes a main area of study providing the ability to check what robots watch and make decisions based on it. However, it is difficult to find a small object in the image mainly due to the flaw of the most of visual recognition networks. Because visual recognition networks are mostly convolution neural network which usually consider local features. So, we make a model considering not only local feature, but also global feature. In this paper, we propose a detection method of a small marker on the object using deep learning and an algorithm that considers global features by combining Transformer's self-attention technique with a convolutional neural network. We suggest a self-attention model with new definition of Query, Key and Value for model to learn global feature and simplified equation by getting rid of position vector and classification token which cause the model to be heavy and slow. Finally, we show that our model achieves higher mAP than state of the art model YOLOr.

생체 정보와 다중 분류 모델을 이용한 암호학적 키 생성 방법 (Cryptographic Key Generation Method Using Biometrics and Multiple Classification Model)

  • 이현석;김혜진;양대헌;이경희
    • 정보보호학회논문지
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    • 제28권6호
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    • pp.1427-1437
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    • 2018
  • 최근 생체 인증 시스템이 확대됨에 따라, 생체 정보를 이용하여 공개키 기반구조(Bio-PKI)에 적용하는 연구들이 진행 중이다. Bio-PKI 시스템에서는 공개키를 생성하기 위해 생체 정보로부터 암호학적 키를 생성하는 과정이 필요하다. 암호학적 키 생성 방법 중 특성 정보를 숫자로 정량화하는 기법은 데이터 손실을 유발하고 이로 인해 키 추출 성능이 저하된다. 이 논문에서는 다중 분류 모델을 이용하여 생체 정보를 분류한 결과를 이용하여 키를 생성하는 방법을 제안한다. 제안하는 기법은 특성 정보의 손실이 없어 높은 키 추출 성능을 보였고, 여러 개의 분류 모델을 이용하기 때문에 충분한 길이의 키를 생성한다.