Abstract

Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assumptions are widely discussed and studied in the field. In the 3D object detection process, classifications are centered on the object’s size, position, and direction. And in 6D pose assumptions, networks emphasize 3D translation and rotation vectors. Successful application of these strategies can have a huge impact on various machine learning-based applications, including the autonomous vehicles, the robotics industry, and the augmented reality sector. Although extensive work has been done on 3D object detection with a pose assumption from RGB images, the challenges have not been fully resolved. Our analysis provides a comprehensive review of the proposed contemporary techniques for complete 3D object detection and the recovery of 6D pose assumptions of an object. In this review research paper, we have discussed several proposed sophisticated methods in 3D object detection and 6D pose estimation, including some popular data sets, evaluation matrix, and proposed method challenges. Most importantly, this study makes an effort to offer some possible future directions in 3D object detection and 6D pose estimation. We accept the autonomous vehicle as the sample case for this detailed review. Finally, this review provides a complete overview of the latest in-depth learning-based research studies related to 3D object detection and 6D pose estimation systems and points out a comparison between some popular frameworks. To be more concise, we propose a detailed summary of the state-of-the-art techniques of modern deep learning-based object detection and pose estimation models.

Highlights

  • With the advancement of three-dimensional (3D) 15 lenges of retrieving 3D objects from 2D images are still being technology, the reconstruction of 3D models with pose as- explored

  • We will mainly no technology has been universally accepted as a final self- focus on the papers that work on the autonomous car and driving solution on the road [181]

  • 35 light pulses to determine both the distance and range of I-A we present the contributions of this review article of deep the surrounding object to avoid a collision and reduce the learning for 3D Object Detection and 6D Pose Estimation

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Summary

INTRODUCTION

With the advancement of three-dimensional (3D) 15 lenges of retrieving 3D objects from 2D images are still being technology, the reconstruction of 3D models with pose as- explored. Both Waymo and Uber include LiDAR the robot and navigation technology, the medical sector, and where Tesla only uses cameras in their smart car system. We will mainly no technology has been universally accepted as a final self- focus on the papers that work on the autonomous car and driving solution on the road [181]. 35 light pulses to determine both the distance and range of I-A we present the contributions of this review article of deep the surrounding object to avoid a collision and reduce the learning for 3D Object Detection and 6D Pose Estimation. 40 pulses and providing the vehicle with information about its of both 3D object detection and 6D pose estimation. Driving cars, so they are not a standalone solution in themselves

CONTRIBUTIONS OF THIS REVIEW TO DEEP
COMPUTER VISION AND DEEP LEARNING
LITERATURE REVIEWS
FEATURE MATCHING METHODS
Real World Benchmark
CONCLUSION
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