CVOct 31, 2019

A Review of methods for Textureless Object Recognition

arXiv:1910.14255v12 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that addresses the problem of textureless object recognition for applications in robotics and manufacturing, summarizing past work without introducing new results.

The paper reviews existing methods for textureless object recognition, a challenging task due to the lack of discriminative features, and provides an overview of approaches such as view-based, feature-based, and shape-based techniques, including recent work from a 2018 conference.

Textureless object recognition has become a significant task in Computer Vision with the advent of Robotics and its applications in manufacturing sector. It has been very challenging to get good performance because of its lack of discriminative features and reflectance properties. Hence, the approaches used for textured objects cannot be applied for textureless objects. A lot of work has been done in the last 20 years, especially in the recent 5 years after the TLess and other textureless dataset were introduced. In our research, we plan to combine image processing techniques (for feature enhancement) along with deep learning techniques (for object recognition). Here we present an overview of the various existing work in the field of textureless object recognition, which can be broadly classified into View-based, Feature-based and Shape-based. We have also added a review of few of the research papers submitted at the International Conference on Smart Multimedia, 2018. Index terms: Computer Vision, Textureless object detection, Textureless object recognition, Feature-based, Edge detection, Deep Learning

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