Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Language Development01:22

Language Development

365
Children master language quickly and with relative ease, supported by both biological predisposition and reinforcement. B. F. Skinner (1957) proposed that language is learned through reinforcement, while Noam Chomsky (1965) argued that language acquisition mechanisms are biologically determined.
The critical period for language acquisition suggests that the ability to acquire language is at its peak early in life. As people age, this proficiency decreases. Language development begins very...
365

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Data-centric approach for instance segmentation in optical waste sorting.

Waste management (New York, N.Y.)·2024
Same author

Comprehensive theoretical study of the effects of facet, oxygen vacancies, and surface strain on iron and cobalt impurities in different surfaces of anatase TiO<sub>2</sub>.

Scientific reports·2024
Same author

Closest horizons of Hsp70 engagement to manage neurodegeneration.

Frontiers in molecular neuroscience·2023
Same author

Deep Learning in Precision Agriculture: Artificially Generated VNIR Images Segmentation for Early Postharvest Decay Prediction in Apples.

Entropy (Basel, Switzerland)·2023
Same author

A comprehensive model of nitrogen-free ordered carbon quantum dots.

Discover nano·2023
Same author

AI-enabled prediction of video game player performance using the data from heterogeneous sensors.

Multimedia tools and applications·2022

Related Experiment Video

Updated: Jul 2, 2025

A Novel Experimental and Analytical Approach to the Multimodal Neural Decoding of Intent During Social Interaction in Freely-behaving Human Infants
11:14

A Novel Experimental and Analytical Approach to the Multimodal Neural Decoding of Intent During Social Interaction in Freely-behaving Human Infants

Published on: October 4, 2015

10.9K

Machine learning-based infant crying interpretation.

Mohammed Hammoud1, Melaku N Getahun1, Anna Baldycheva2

  • 1Digital Engineering CREI, Skolkovo Institute of Science and Technology, Moscow, Russia.

Frontiers in Artificial Intelligence
|February 23, 2024
PubMed
Summary
This summary is machine-generated.

Interpreting infant cries is challenging for caregivers. This study developed an advanced machine learning model using Mel-frequency cepstral coefficients (MFCCs) and a random forest classifier to accurately decode infant distress signals.

Keywords:
Mel-frequency cepstral coefficientaudio processingmachine learningspectrogramtime-series classificationtime-series imagining

More Related Videos

Quantified Assessment of Infant's Gross Motor Abilities Using a Multisensor Wearable
09:24

Quantified Assessment of Infant's Gross Motor Abilities Using a Multisensor Wearable

Published on: May 17, 2024

1.4K
Author Spotlight: IntelliSleepScorer &#8212; A High-Accuracy, Accessible GUI Software for Automated Sleep Stage Scoring in Mice and its Application in Psychiatric Research
04:54

Author Spotlight: IntelliSleepScorer — A High-Accuracy, Accessible GUI Software for Automated Sleep Stage Scoring in Mice and its Application in Psychiatric Research

Published on: November 8, 2024

514

Related Experiment Videos

Last Updated: Jul 2, 2025

A Novel Experimental and Analytical Approach to the Multimodal Neural Decoding of Intent During Social Interaction in Freely-behaving Human Infants
11:14

A Novel Experimental and Analytical Approach to the Multimodal Neural Decoding of Intent During Social Interaction in Freely-behaving Human Infants

Published on: October 4, 2015

10.9K
Quantified Assessment of Infant's Gross Motor Abilities Using a Multisensor Wearable
09:24

Quantified Assessment of Infant's Gross Motor Abilities Using a Multisensor Wearable

Published on: May 17, 2024

1.4K
Author Spotlight: IntelliSleepScorer &#8212; A High-Accuracy, Accessible GUI Software for Automated Sleep Stage Scoring in Mice and its Application in Psychiatric Research
04:54

Author Spotlight: IntelliSleepScorer — A High-Accuracy, Accessible GUI Software for Automated Sleep Stage Scoring in Mice and its Application in Psychiatric Research

Published on: November 8, 2024

514

Area of Science:

  • Infant communication and signal processing.
  • Machine learning applications in healthcare.

Background:

  • Infant crying is a primary communication method, often difficult for caregivers to interpret.
  • Misinterpreting infant cries can lead to significant problems for infant well-being.
  • Existing methods for cry analysis require improved audio feature representation and classification.

Purpose of the Study:

  • To develop an accurate infant cry analysis system.
  • To evaluate various audio feature representations and machine learning classifiers for cry interpretation.
  • To identify optimal features and models for distinguishing infant states based on vocalizations.

Main Methods:

  • Utilized time-domain (Zero-Crossing Rate, Root Mean Square), frequency-domain (Mel-spectrogram), and time-frequency-domain (Mel-frequency cepstral Coefficients - MFCCs) audio features.
  • Applied time-series imaging algorithms to transform MFCC features into visual representations.
  • Trained and evaluated multiple machine learning classifiers including Decision Tree, Random Forest, K-Nearest Neighbors, and Bagging.

Main Results:

  • Mel-frequency cepstral Coefficients (MFCCs), Zero-Crossing Rate (ZCR), and Root Mean Square (RMS) features demonstrated high performance.
  • The MFCC-based Random Forest (RF) classifier achieved a 96.39% accuracy rate.
  • This performance surpassed the state-of-the-art scalogram-based ShuffleNet classifier (95.17% accuracy).

Conclusions:

  • The proposed MFCC-based Random Forest approach offers a highly effective method for infant cry analysis.
  • This study highlights the importance of advanced audio feature extraction and machine learning for understanding infant communication.
  • The findings provide a promising tool to aid caregivers in interpreting infant needs more accurately.