红外数据集 | 收集OTCBVSKAISTFLIR红外图像数据 admin 2023-05-25 09:57:01 篇首语:本文由小编为大家整理,主要介绍了红外数据集 | 收集OTCBVSKAISTFLIR红外图像数据相关的知识,希望对你有一定的参考价值。 目录 1 . OTCBVS数据集 Dataset 01: OSU Thermal Pedestrian Database Dataset 02: IRIS Thermal/Visible Face Database Dataset 03: OSU Color-Thermal Database Dataset 04: Terravic Facial IR Database Dataset 05: Terravic Motion IR Database Dataset 06: Terravic Weapon IR Database Dataset 07: CBSR NIR Face Dataset Dataset 08: Audio-Visual Vehicle (AVV) Dataset Dataset 09: CSIR-CSIO Moving Object Thermal Infrared Imagery Dataset (MOTIID) Dataset 10: Pedestrian Infrared/visible Stereo Video Dataset Dataset 11: Thermal Infrared Video Benchmark for Visual Analysis Dataset 12: Maritime Imagery in the Visible and Infrared Spectrums Dataset 13: ContactDB: Analyzing and Predicting Grasp Contact via Thermal Imaging Dataset 14: DIAST Variability Illuminated Thermal and Visible Ear Image Dataset 2 . KAIST行人数据集 3、FLIR红外目标识别数据集 1 . OTCBVS数据集 http://vcipl-okstate.org/pbvs/bench/ 1、4、5、6、7、9、11是红外数据集;8有声音、可见光和EPI,没有红外;其他是可见光和红外数据集 Dataset 01: OSU Thermal Pedestrian Database Topic of Interest: Person detection in thermal imagery. Sensor Details: Raytheon 300D thermal sensor core 75 mm lens Camera mounted on rooftop of 8-story building Gain/focus on manual control Data Details: Pedestrian intersection on the Ohio State University campus Number of sequences = 10 Total number of images = 284 Format of images = 8-bit grayscale bitmap Image size = 360 x 240 pixels Sampling rate = non-uniform, less than 30Hz Environmental information for each sequence provided in subdirectories Ground truth provided in subdirectories as list of bounding boxes (with approximately same aspect ratio) around people. For the ground truth data, we selected only those people that were at least 50% visible in the image (i.e., highly occluded people were not selected). Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; J. Davis and M. Keck, "A two-stage approach to person detection in thermal imagery," In Proc. Workshop on Applications of Computer Vision, January 2005 [pdf] Point-of-contact: James W. Davis, jwdavis[at]cse.ohio-state.edu Download: Click here to download this dataset. Dataset 02: IRIS Thermal/Visible Face Database Topic of Interest: Simultaneously acquired unregistered thermal and visible face images under variable illuminations, expressions, and poses. Sensor Details: Thermal - Raytheon Palm-IR-Pro Visible - Panasonic WV-CP234 Setup: Data Details: Total size of 1.83 GB Image size: 320 x 240 pixels (visible and thermal) 4228 pairs of thermal and visible images 176-250 images/person, 11 images per rotation (poses for each expression and each illumination) 30 inpiduals - Expression, pose, and illumination Expression: ex1, ex2, ex3 - surprised, laughing, angry (varying poses) Illumination: Lon (left light on), Ron (right light on), 2on (both lights on), dark (dark room), off (left and right lights off), varying poses Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; DOE University Research Program in Robotics under grant DOE-DE-FG02-86NE37968; DOD/TACOM/NAC/ARC Program under grant R01-1344-18; FAA/NSSA grant R01-1344-48/49; Office of Naval Research under grant #N000143010022. Point of Contact: Besma Abidi, besma[at]utk.edu Download: Click here to download this dataset. Dataset 03: OSU Color-Thermal Database Topic of Interest: Fusion of color and thermal imagery, Fusion-based object detection in color and thermal imagery Sensor Details: Thermal Sensor: Raytheon PalmIR 250D, 25 mm lens Color Sensor: Sony TRV87 Handycam Cameras mounted adjacent to each other on tripod at two locations approximately 3 stories above ground Gain/focus on manual control Data Details: Busy pathway intersections on the Ohio State University campus Number of color/thermal sequences = 6 (3 at each location) Total number of images = 17089 Format of images = Thermal: 8-bit grayscale bitmap, Color: 24-bit color bitmap Image size = 320 x 240 pixels Sampling rate = approx. 30Hz Color/Thermal images registered using homography with manually-selected points Files containing tracking results on the dataset are provided by Alex Leykin Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; J. Davis and V. Sharma, "Background-Subtraction using Contour-based Fusion of Thermal and Visible Imagery," Computer Vision and Image Understanding, Vol 106, No. 2-3, 2007, pp. 162-182. Point-of-contact: James W. Davis, jwdavis[at]cse.ohio-state.edu Download: Click here to download this dataset. Dataset 04: Terravic Facial IR Database Topic of Interest: Facial analysis with thermal imagery Sensor Details: Raytheon L-3 Thermal-Eye 2000AS Data Details: Number of thermal sequences = 20 Variations = (front,left,right; indoor/outdoor; glasses, hat) Format of images = 8-bit grayscale JPEG Image size = 320 x 240 pixels Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; Roland Miezianko, Terravic Research Infrared Database. Point-of-contact: Roland Miezianko, roland[at]terravic.com Download: Click here to download this dataset. Dataset 05: Terravic Motion IR Database Topic of Interest: Detection and tracking with thermal imagery Sensor Details: Raytheon L-3 Thermal-Eye 2000AS Data Details: Number of thermal sequences = 18 (total) Outdoor Motion and Tracking Scenarios (11)Outdoor House Surveillance (1)Indoor Hallway Motion (1)Plane Motion and Tracking (1)Underwater and Near-Surface Motion (2)Uneventful Background Motion (2)Format of images = 8-bit grayscale JPEGImage size = 320 x 240 pixels Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; Roland Miezianko, Terravic Research Infrared Database. Point-of-contact: Roland Miezianko, roland[at]terravic.com Download: Click here to download this dataset. Dataset 06: Terravic Weapon IR Database Topic of Interest: Weapon detection and weapon discharge detection with thermal imagery Sensor Details: Raytheon L-3 Thermal-Eye 2000AS Data Details: Number of thermal sequences = 5 (total) Weapon Presence Detection (1)Weapon Discharge Detection (4)Format of images = 8-bit grayscale JPEGImage size = 320 x 240 pixels Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; Roland Miezianko, Terravic Research Infrared Database. Point-of-contact: Roland Miezianko, roland[at]terravic.com Download: Click here to download this dataset. Dataset 07: CBSR NIR Face Dataset Topic of Interest: NIR face detection, NIR eye detection, NIR face recognition Sensor Details: The images were taken by an NIR camera with active NIR lighting. More details are available in reference below. Data Details: 3,940 NIR face images of 197 people. The image size is 480 by 640 pixels, 8 bit, without compression. Images are pided into a gallery set and a probe set. In the gallery set, there are 8 images per person. In the probe set, 12 images per person. The image information is provided, which gives the image number, person number, and eye coordinates. Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; Center for Biometrics and Security Research (CBSR) www.cbsr.ia.ac.cn; AuthenMetric Co. Ltd (Beijing) www.authenmetric.com Also see: Stan Z. Li, RuFeng Chu, ShengCai Liao, Lun Zhang, "Illumination Invariant Face Recognition Using Near-infrared Images," IEEE Transactions on Pattern Analysis and Machine Intelligence (Special issue on Biometrics: Progress and Directions), Vol.29, No.4, April 2007, pp. 627-639. [pdf] Point-of-contact: Stan Z. Li, szli[at]cbsr.ia.ac.cn, szli[at]nlpr.ia.ac.cn Download: Click here to download this dataset. Dataset 08: Audio-Visual Vehicle (AVV) Dataset Topic of Interest: Ground level moving vehicle detection and classification under various challenging conditions (occlusions, motion blur, various perspective views). Sensor Details: Standoff long distance Laser Doppler Vibrometer (acoustic), Polytech LDV OFV505, HeNe laser 632 nm. two PTZ cameras, Canon VC-C50i. Data Details: 961 sets of multimodal vehicles samples from both a local road (25 meters) and a highway (55 meters) locations. Each set of sample has three files: an audio clip (mono 22.5kHz, 16 bit), an original image shot, and a reconstructed visual image. Several main categories, bikes, buses, motocycles, 2-door sedan, 4-door sedans, pickup trucks, regular trucks, mini-vans, regular vans, and mixtures. Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench; Wang, T. and Zhu, Z. (2012) "Real time vehicle detection and reconstruction for improving classification," IEEE Computer Society"s Workshop on Applications of Computer Vision (WACV), January 9-11, 2012, Colorado. Point-of-contact: Tao Wang, tao.wang[at]baesystems.com Zhigang Zhu, zhu[at]cs.ccny.cuny.edu Download: Click here to download this dataset. Dataset 09: CSIR-CSIO Moving Object Thermal Infrared Imagery Dataset (MOTIID) Topic of Interest: Moving object (Pedestrian, Vehicle, etc.) detection in thermal infrared imagery Sensor Details: The images were taken by a thermal infrared camera. Camera Mounted on tripod at about a height of 4 ft. More details are available in reference below. Data Details: Number of thermal sequences = 18 Type of moving targets: Two different models of 4 wheelers (Ambassador and Innova), a 3 wheeler (Auto-rickshaw), a 2 wheeler (motor cycle) and human (s) walking at different distances, dog strolling and bird flying Image size = 640 x 480 pixels Sampling rate = 10Hz Duration of each thermal video sequence was varying between 4-22 seconds Each thermal video sequence consists of one or more number moving targets entering and exiting the camera’s field of view. Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench Akula, A., Ghosh, R., Kumar, S., & Sardana, H. K. (2013). Moving target detection in thermal infrared imagery using spatiotemporal information. JOSA A, 30(8), 1492-1501 Akula, A., Khanna, N., Ghosh, R., Kumar, S., Das, A., & Sardana, H. K. (2014). Adaptive contour-based statistical background subtraction method for moving target detection in infrared video sequences. Infrared Physics & Technology, 63, 103-109. Point-of-contact: Aparna Akula, aparna.akula[at]csio.res.in Download: Click here to download this dataset. Dataset 10: Pedestrian Infrared/visible Stereo Video Dataset Topic of Interest: Registration of pedestrian at close range in infrared/visible stereo videos Sensors: FLIR Thermovision A40M Sony XCD-710CR Data Details: Four infrared-visible video pairs between 100 and 4400 frames (480x360) 206 annotated frames (disparities) 25819 ground-truth point pairs Foregrounds are provided. All videos include between 1 to 5 actors walking around and occluding each other Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench Bilodeau, G.-A., Torabi, A., St-Charles, P.-L., Riahi, D., Thermal-Visible Registration of Human Silhouettes: a Similarity Measure Performance Evaluation, Infrared Physics & Technology, Vol. 64, May 2014, pp. 79-86 Point-of-contact: Guillaume-Alexandre Bilodeau, gabilodeau[at]polymtl.ca Download: Click here to download this dataset. Dataset 11: Thermal Infrared Video Benchmark for Visual Analysis Topic of Interest:Object detection, counting and tracking with single/multiple views in infrared videos Sensors:FLIR SC8000 Data Details:The benchmark includes over 60k frames, hundreds of annotations and camera calibration files for multi-view geometry. Sequences are designed for testing different vision tasks: Tracking single pedestrian at low resolution. frame size:1024x640 Tracking single flying bat at low resolution. frame size:1024x512 Tracking multiple objects (pedestrian, car, bicycle, motorcycle). frame size:1024x512 Tracking multiple flying bats. frame size:1024x1024 Tracking multiple people with planar motion from multiple views. frame size: 512x512 Tracking multiple flying bats in 3D from three views. frame size: 640x512 Counting flying bats with high density. frame size: 640x512 and 1024x1024 Requested Citation Acknowledgment: IEEE OTCBVS WS Series BenchZheng Wu, Nathan Fuller, Diane Theriault, Margrit Betke, "A Thermal Infrared Video Benchmark for Visual Analysis", in Proceeding of 10th IEEE Workshop on Perception Beyond the Visible Spectrum (PBVS), Columbus, Ohio, USA, 2014. Point-of-contact: wuzheng1127 AT gmail.com Download:http://csr.bu.edu/BU-TIV/BUTIV.html Dataset 12: Maritime Imagery in the Visible and Infrared Spectrums Topic of Interest: VAIS contains simultaneously acquired unregistered thermal and visible images of ships acquired from piers. It is suitable for object classification research. See the publication for further details.Sensor Details: Visible: ISVI IC-C25, which captures 5,056?,056 bayered color pixel images Infrared: Sofradir-EC Atom 1024, which captures 1024?68 pixel images Data Details: Total IR Images: 1242 Total Visible Images: 1623 Total Images: 2865 Total Pairs: 1088 Number of unique ships: 264 Number of Night IR Images: 154 Number of Basic Categories: 6 Number of Fine-Grained Categories: 15Requested Citation Acknowledgment: IEEE OTCBVS WS Series Bench Zhang, M.M, Choi, J., Daniilidis, K., Wolf, M.T. & Kanan, C. (2015) VAIS: A Dataset for Recognizing Maritime Imagery in the Visible and Infrared Spectrums. In: Proc of the 11th IEEE Workshop on Perception Beyond the Visible Spectrum (PBVS-2015).Point of contact Christopher Kanan (kanan AT jpl.nasa.gov) Michael Wolf (wolf AT jpl.nasa.gov) Download: Click here to download this dataset. Dataset 13: ContactDB: Analyzing and Predicting Grasp Contact via Thermal Imaging Topic of Interest: Hand-object contact during grasping of household objects.Sensor Details: FLIR Boson 640 Thermal camera + Kinect v2 RGB-D camera Data Details: - RGB-D-Thermal scan videos of household objects grasped by human participants - Each scan video also has an associated textured object mesh where texture indicates contact - Hand-object contact is revealed by the thermal camera as the thermal imprint left over by heat transfer from hand to object during grasping - 50 participants x (48 objects grasped w/ "handoff" intent + 27 objects grasped w/ "use" intent) - RGB-D image size: 960x540, Thermal image size: 640x512Requested Citation Acknowledgment: IEEE PBVS WS Series Bench S. Brahmbhatt, C. Ham, CC Kemp and J. Hays, "ContactDB: Analyzing and Predicting Grasp Contact via Thermal Imaging", In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition 2019. DownloadPoint of contactSamarth Brahmbhatt Download: Click here to download the dataset. Click here to download the code. Dataset 14: DIAST Variability Illuminated Thermal and Visible Ear Image Dataset Topic of Interest: Thermal and visible ear recognition. Thermal and visible image fusion.Sensor Details: FLIR E60 (both thermal and visible images) Data Details: - Grayscale visible and thermal ear image of side face profile form 55 subjects. - Images were taken in 5 different illuminations (measured using a lux meter) for every subject, measured. - Illumination ranging between 1 lux and 10700 lux. - Two snaps of images were taken on every illumination for each side of ear. (10 visible ear images for right ear and 10 visible ear images for left ear). - Each visible image has a corresponding thermal image (10 thermal images for right ear and 10 thermal images for left ears). - Each visible image and corresponding thermal image has been manually registered. - The resolution for all images (visible and thermal) is 125x125 pixel. - There are total of 2200 image in this database (1100 visible image (550 left and 550 right), 1100 thermal images (550 left, 550 right)).Requested Citation Acknowledgment: IEEE PBVS WS Series Bench S.M.Z.S.Z.Ariffin, N. Jamil & P.N.M.A. Rahman, ¡°DIAST Variability Illuminated Thermal and Visible Ear Images Datasets¡±, in Proceeding of International Conference on Signal Processing: Algorithms, Architectures, Arrangements, and Applications (SPA), 2016. DOI : 10.1109/SPA.2016.7763611Point of contactSyed Mohd Zahid Download: Click here to download the dataset. 2 . KAIST行人数据集 KAIST行人数据集总共包括95328张图片,每张图片都包含RGB彩色图像和红外图像两个版本。总共包含103128个密集注释。数据集分别在白天和晚上捕获了包括校园、街道以及乡下的各种常规交通场景。图片大小为640×480。数据集总共分为12个文件夹set00-set11。前6个文件夹为训练集包含50187张图片,后6个文件夹为测试集包含45141张图片。 数据集的标签中包含person、people和cyclist三个类别。比较好区分的个体则被标注为person,不太好分辨的多个个体则被标注为people,骑行的人则被标注为cyclist。 https://github.com/SoonminHwang/rgbt-ped-detection 3、FLIR红外目标识别数据集 10k张可将光-红外图像对,但是没有对准,进行融合前需校正; 4个种类:训练集上有person: 22372个, bicycle :3986个, car :41260个, dog :226个;测试集上有person: 5779个, bicycle :471个, car :5432个, dog :14个 https://pan.baidu.com/s/11GJe4MdM_NH6fuENCQ2MtQ 提取码:019b以上是关于红外数据集 | 收集OTCBVSKAISTFLIR红外图像数据的主要内容,如果未能解决你的问题,请参考以下文章 Matlab2016b线性规划函数linprog的几个问题 操作系统磁盘寻道算法 您可能还会对下面的文章感兴趣: 相关文章 浏览器打不开网址提示“ERR_CONNECTION_TIMED_OUT”错误代码的解决方法 如何安装ocx控件 VMware的虚拟机为啥ip地址老是自动变化 vbyone和EDP区别 linux/debian到底怎么重启和关机 苹果平板键盘被弄到上方去了,如何调回正常? 机器学习常用距离度量 如何查看kindle型号