Weighted Unsupervised Learning for 3D Object Detection

02/18/2016
by   Kamran Kowsari, et al.
0

This paper introduces a novel weighted unsupervised learning for object detection using an RGB-D camera. This technique is feasible for detecting the moving objects in the noisy environments that are captured by an RGB-D camera. The main contribution of this paper is a real-time algorithm for detecting each object using weighted clustering as a separate cluster. In a preprocessing step, the algorithm calculates the pose 3D position X, Y, Z and RGB color of each data point and then it calculates each data point's normal vector using the point's neighbor. After preprocessing, our algorithm calculates k-weights for each data point; each weight indicates membership. Resulting in clustered objects of the scene.

READ FULL TEXT

page 2

page 4

page 5

page 6

research
09/18/2020

Moving object detection for visual odometry in a dynamic environment based on occlusion accumulation

Detection of moving objects is an essential capability in dealing with d...
research
04/27/2013

Bingham Procrustean Alignment for Object Detection in Clutter

A new system for object detection in cluttered RGB-D images is presented...
research
08/12/2020

SIDOD: A Synthetic Image Dataset for 3D Object Pose Recognition with Distractors

We present a new, publicly-available image dataset generated by the NVID...
research
01/11/2022

Drone Object Detection Using RGB/IR Fusion

Object detection using aerial drone imagery has received a great deal of...
research
03/22/2016

Active Detection and Localization of Textureless Objects in Cluttered Environments

This paper introduces an active object detection and localization framew...
research
01/28/2020

Learning to Catch Piglets in Flight

Catching objects in-flight is an outstanding challenge in robotics. In t...
research
09/25/2017

LADAR-Based Mover Detection from Moving Vehicles

Detecting moving vehicles and people is crucial for safe operation of UG...

Please sign up or login with your details

Forgot password? Click here to reset