Searching for Uncollected Litter with Computer Vision

11/27/2022
by   Julian Hernandez, et al.
0

This study combines photo metadata and computer vision to quantify where uncollected litter is present. Images from the Trash Annotations in Context (TACO) dataset were used to teach an algorithm to detect 10 categories of garbage. Although it worked well with smartphone photos, it struggled when trying to process images from vehicle mounted cameras. However, increasing the variety of perspectives and backgrounds in the dataset will help it improve in unfamiliar situations. These data are plotted onto a map which, as accuracy improves, could be used for measuring waste management strategies and quantifying trends.

READ FULL TEXT

page 5

page 6

page 9

page 12

page 13

research
04/15/2016

The Chow Form of the Essential Variety in Computer Vision

The Chow form of the essential variety in computer vision is calculated....
research
10/07/2016

ResearchDoom and CocoDoom: Learning Computer Vision with Games

In this short note we introduce ResearchDoom, an implementation of the D...
research
08/24/2017

Review on Computer Vision Techniques in Emergency Situation

In emergency situations, actions that save lives and limit the impact of...
research
09/10/2015

Rigid Multiview Varieties

The multiview variety from computer vision is generalized to images by n...
research
03/04/2014

A Novel Method for Vectorization

Vectorization of images is a key concern uniting computer graphics and c...
research
02/03/2021

One Label, One Billion Faces: Usage and Consistency of Racial Categories in Computer Vision

Computer vision is widely deployed, has highly visible, society altering...
research
08/13/2017

An Extremely Efficient Chess-board Detection for Non-trivial Photos

We present a set of algorithms that can be used to locate and crop the c...

Please sign up or login with your details

Forgot password? Click here to reset