Related references
Note: Only part of the references are listed.An unsupervised method for extracting semantic features of flotation froth images
Xu Wang et al.
MINERALS ENGINEERING (2022)
Application of density-based clustering algorithm and capsule network to performance monitoring of antimony flotation process
Lihui Cen et al.
MINERALS ENGINEERING (2022)
Recent advances in flotation froth image analysis
Chris Aldrich et al.
MINERALS ENGINEERING (2022)
Deep learning feature-based setpoint generation and optimal control for flotation processes
Mingxi Ai et al.
INFORMATION SCIENCES (2021)
Froth image feature engineering-based prediction method for concentrate ash content of coal flotation
Zhiping Wen et al.
MINERALS ENGINEERING (2021)
A layered working condition perception integrating handcrafted with deep features for froth flotation
Xiaoliang Gao et al.
MINERALS ENGINEERING (2021)
Flotation froth image classification using convolutional neural networks
M. Zarie et al.
MINERALS ENGINEERING (2020)
Flotation froth image recognition with convolutional neural networks
Y. Fu et al.
MINERALS ENGINEERING (2019)
A watershed segmentation algorithm based on an optimal marker for bubble size measurement
Hu Zhang et al.
MEASUREMENT (2019)
Shape-weighted bubble size distribution based reagent predictive control for the antimony flotation process
Mingxi Ai et al.
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS (2019)
Data-driven-based adaptive fuzzy neural network control for the antimony flotation plant
Mingxi Ai et al.
JOURNAL OF THE FRANKLIN INSTITUTE-ENGINEERING AND APPLIED MATHEMATICS (2019)
On-Line Froth Depth Estimation for Sulphur Flotation Process With Multiple Working Conditions
Mingfang He et al.
IEEE ACCESS (2019)
DTCWT-based zinc fast roughing working condition identification
Zhuo He et al.
CHINESE JOURNAL OF CHEMICAL ENGINEERING (2018)
Froth image analysis by use of transfer learning and convolutional neural networks
Yihao Fu et al.
MINERALS ENGINEERING (2018)
An image segmentation algorithm for measurement of flotation froth bubble size distributions
A. Jahedsaravani et al.
MEASUREMENT (2017)
Densely Connected Convolutional Networks
Gao Huang et al.
30TH IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2017) (2017)
Nonparametric density estimation of froth colour texture distribution for monitoring sulphur flotation process
Mingfang He et al.
MINERALS ENGINEERING (2013)
Color co-occurrence matrix based froth image texture extraction for mineral flotation
Weihua Gui et al.
MINERALS ENGINEERING (2013)
Flotation process fault detection using output PDF of bubble size distribution
Canhui Xu et al.
MINERALS ENGINEERING (2012)
Online monitoring and control of froth flotation systems with machine vision: A review
C. Aldrich et al.
INTERNATIONAL JOURNAL OF MINERAL PROCESSING (2010)
Application of Highlight Removal and Multivariate Image Analysis to Color Measurement of Flotation Bubble Images
Chunhua Yang et al.
INTERNATIONAL JOURNAL OF IMAGING SYSTEMS AND TECHNOLOGY (2009)
Bubble size estimation for flotation processes
Bao Lin et al.
MINERALS ENGINEERING (2008)
Application of numerical image analysis to process diagnosis and physical parameter measurement in mineral processes -: Part I:: Flotation control based on froth textural characteristics
Gianni Bartolacci et al.
MINERALS ENGINEERING (2006)
Flotation froth monitoring using multiresolutional multivariate image analysis
JJ Liu et al.
MINERALS ENGINEERING (2005)
Off-line image analysis for froth flotation of coal
C Citir et al.
COMPUTERS & CHEMICAL ENGINEERING (2004)
Characterisation of flotation froth colour and structure by machine vision
G Bonifazi et al.
COMPUTERS & GEOSCIENCES (2001)