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Project: Development of AEB System for Pedestrian Protection (4th year)

    funded by Ministry of Trade, Industry and Energy of Korea. (MOTIE)(No.10044775)

Goals

  1. Research trend of sensor fusion for object detection
  2. Build a testbed / Select datasets
    • Datasets: Traffic scenes
      • KITTI [Link]
        • Stereo, Lidar, GPS
        • Classes: Car, Pedestrian, Cyclist
        • GT: Bounding box
      • Cityscapes [Link]
        • Stereo, Timestamp
        • Groups: flat, human, vehicle, construction, object, nature, sky, void
        • GT: Dense pixel-level annotations
      • Virtual KITTI [Link]
        • Mono (forward / 15-deg-right, 15-deg-left)
        • Classes: Car, Pedestrian, Cyclist
        • GT: Bounding box, Instance-level pixel annotations, Optical-flow, Depth
        • Weather conditions: morning, sunset, overcast, fog, rain
      • Synthia [Link]
        • 8 RGB (form binocular 360 deg), 8 depth sensors
        • Classes: misc, sky, building, road, sidewalk, fence, vegetation, pole, car, sign, pedestrian, cyclist, lanemarking
        • GT: Instance-level pixel annotations
        • Seasons: winter, fall, spring, summer
        • Lightings: dynamic light, shadows, day-time, rain, night-time
  3. Implement several algorithms
  4. Evaluation / Comparison / Analysis

Related papers.

  1. Unsupervised Depth Estimation. [Garg, ECCV '16]
  2. LIDAR point upsampling. [Schneider, Arxiv '16]
  3. Unified multi-scale CNN. (KITTI: 8th car, 1st ped) [Cai, ECCV '16] [Home] [Code] [Video]
  4. Subcategory-aware CNN. (KITTI: 7th car, 3rd ped)) [Xiang, Arxiv '16] [Home]
  5. Exploit all layers. (KITTI: 10th car, 5th ped) [Yang, CVPR '16] [Home]
  6. 2D/3D Sensor Exploitation and Fusion for Enhanced Object Detection (Similar to ours) [Xu, CVPRW '14]

 

Why do I use github for this project?

See this. (Korean)

Easy & Pretty Documentation with Markdown

See this. (Korean)

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Project page for Ped-AEB project, 4th year

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