See the Glass Half Full: Reasoning about Liquid Containers, their Volume and Content

01/10/2017
by   Roozbeh Mottaghi, et al.
0

Humans have rich understanding of liquid containers and their contents; for example, we can effortlessly pour water from a pitcher to a cup. Doing so requires estimating the volume of the cup, approximating the amount of water in the pitcher, and predicting the behavior of water when we tilt the pitcher. Very little attention in computer vision has been made to liquids and their containers. In this paper, we study liquid containers and their contents, and propose methods to estimate the volume of containers, approximate the amount of liquid in them, and perform comparative volume estimations all from a single RGB image. Furthermore, we show the results of the proposed model for predicting the behavior of liquids inside containers when one tilts the containers. We also introduce a new dataset of Containers Of liQuid contEnt (COQE) that contains more than 5,000 images of 10,000 liquid containers in context labelled with volume, amount of content, bounding box annotation, and corresponding similar 3D CAD models.

READ FULL TEXT

page 3

page 6

page 7

page 8

research
02/28/2018

Intelligent Irrigation System Based on Arduino

This paper explains how to build an intelligent irrigation system using ...
research
08/24/2019

Where Is My Mirror?

Mirrors are everywhere in our daily lives. Existing computer vision syst...
research
05/30/2019

All-In-One Underwater Image Enhancement using Domain-Adversarial Learning

Raw underwater images are degraded due to wavelength dependent light att...
research
06/20/2014

Predicting Motivations of Actions by Leveraging Text

Understanding human actions is a key problem in computer vision. However...
research
12/30/2016

Smart Content Recognition from Images Using a Mixture of Convolutional Neural Networks

With rapid development of the Internet, web contents become huge. Most o...
research
04/04/2016

Waterdrop Stereo

This paper introduces depth estimation from water drops. The key idea is...
research
09/24/2018

Fast, Precise Myelin Water Quantification using DESS MRI and Kernel Learning

Purpose: To investigate the feasibility of myelin water content quantifi...

Please sign up or login with your details

Forgot password? Click here to reset