Realworld 3D Object Recognition Using a 3D Extension of the HOG Descriptor and a Depth Camera

Sensors (Basel). 2021 Jan 29;21(3):910. doi: 10.3390/s21030910.

Abstract

3D object recognition is an generic task in robotics and autonomous vehicles. In this paper, we propose a 3D object recognition approach using a 3D extension of the histogram-of-gradients object descriptor with data captured with a depth camera. The presented method makes use of synthetic objects for training the object classifier, and classify real objects captured by the depth camera. The preprocessing methods include operations to achieve rotational invariance as well as to maximize the recognition accuracy while reducing the feature dimensionality at the same time. By studying different preprocessing options, we show challenges that need to be addressed when moving from synthetic to real data. The recognition performance was evaluated with a real dataset captured by a depth camera and the results show a maximum recognition accuracy of 81.5%.

Keywords: 3D object recognition; 3DHOG; Intel RealSense; ModelNet10; ModelNet40; PCA; depth camera; feature descriptor; histogram-of-gradients.