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

Convolution Properties II01:17

Convolution Properties II

179
The important convolution properties include width, area, differentiation, and integration properties.
The width property indicates that if the durations of input signals are T1 and T2, then the width of the output response equals the sum of both durations, irrespective of the shapes of the two functions. For instance, convolving two rectangular pulses with durations of 2 seconds and 1 second results in a function with a width of 3 seconds.
The area property asserts that the area under the...
179
Convolution Properties I01:20

Convolution Properties I

145
Convolution computations can be simplified by utilizing their inherent properties.
The commutative property reveals that the input and the impulse response of an LTI (Linear Time-Invariant) system can be interchanged without affecting the output:
145
Deconvolution01:20

Deconvolution

150
Deconvolution, also known as inverse filtering, is the process of extracting the impulse response from known input and output signals. This technique is vital in scenarios where the system's characteristics are unknown, and they must be inferred from the observable signals.
Deconvolution involves several mathematical techniques to derive the impulse response. One common approach is polynomial division. In this method, the input and output sequences are treated as coefficients of...
150
Convolution: Math, Graphics, and Discrete Signals01:24

Convolution: Math, Graphics, and Discrete Signals

242
In any LTI (Linear Time-Invariant) system, the convolution of two signals is denoted using a convolution operator, assuming all initial conditions are zero. The convolution integral can be divided into two parts: the zero-input or natural response and the zero-state or forced response, with t0 indicating the initial time.
To simplify the convolution integral, it is assumed that both the input signal and impulse response are zero for negative time values. The graphical convolution process...
242
Depth Perception and Spatial Vision01:15

Depth Perception and Spatial Vision

627
Depth perception is the ability to perceive objects three-dimensionally. It relies on two types of cues: binocular and monocular. Binocular cues depend on the combination of images from both eyes and how the eyes work together. Since the eyes are in slightly different positions, each eye captures a slightly different image. This disparity between images, known as binocular disparity, helps the brain interpret depth. When the brain compares these images, it determines the distance to an object.
627
Pulse amplitude and quality01:17

Pulse amplitude and quality

1.7K
Pulse amplitude is a crucial indicator of cardiac health because it provides valuable insights into the strength of left ventricular contractions and the overall uniformity of blood circulation within the vasculature. The strength of the pulse is directly related to the force with which the heart contracts and the volume of blood being pumped.
A weak or absent pulse may indicate reduced cardiac output or poor left ventricular contraction, which can be signs of cardiovascular dysfunction or...
1.7K

You might also read

Related Articles

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

Sort by
Same author

New isoxazole-based heterocyclic hybrids with dual antimicrobial and antioxidant bioactivity: integrated synthesis, <i>in vitro</i> assessment, and computational exploration.

RSC advances·2026
Same author

GATF-PCQA: A Graph Attention Transformer Fusion Network for Point Cloud Quality Assessment.

Journal of imaging·2025
Same author

Exploring weighted network backbone extraction: A comparative analysis of structural techniques.

PloS one·2025
Same author

Backbone extraction through statistical edge filtering: A comparative study.

PloS one·2025
Same author

Complexity data science: A spin-off from digital twins.

PNAS nexus·2024
Same author

Comparison of Graph Distance Measures for Movie Similarity Using a Multilayer Network Model.

Entropy (Basel, Switzerland)·2024
Same journal

Human-AI Interaction in Interventional Radiology: A Narrative Review of Current Applications, Challenges, and Future Directions.

Journal of imaging·2026
Same journal

Coronary Artery Anomalies and Anatomical Variants: Cross-Sectional Diagnostic Imaging and Clinical Background.

Journal of imaging·2026
Same journal

YoLeTooth: A Unified Framework for Joint Tooth Segmentation and Periapical Lesion Detection in Panoramic Radiographs.

Journal of imaging·2026
Same journal

Radiomics-Guided Multi-Sequence Learning for Pathological Complete Response Prediction from Breast MRI with Missing Auxiliary Sequences.

Journal of imaging·2026
Same journal

Cutaneous Thermography in Arthropathies: Quantitative Imaging, Machine Learning, and Clinical Translation.

Journal of imaging·2026
Same journal

Two-Stage Dynamic Synergistic Segmentation Method for Myocardial Pathology.

Journal of imaging·2026
See all related articles

Related Experiment Video

Updated: Jun 23, 2025

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images
14:08

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images

Published on: April 13, 2013

42.6K

Point Cloud Quality Assessment Using a One-Dimensional Model Based on the Convolutional Neural Network.

Abdelouahed Laazoufi1, Mohammed El Hassouni2, Hocine Cherifi3

  • 1Research Laboratory in Computer Science and Telecommunications (LRIT), Faculty of Sciences, Mohammed V University in Rabat, Rabat 1014, Morocco.

Journal of Imaging
|June 26, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces a new deep learning method for no-reference 3D point cloud quality assessment. The approach effectively evaluates distortions in 3D models, outperforming existing methods.

Keywords:
NR metricconvolutional neural network (CNN)point cloudtransfer learning

More Related Videos

Author Spotlight: Enhancement of Salient Object Detection for Smart Grid Applications
03:31

Author Spotlight: Enhancement of Salient Object Detection for Smart Grid Applications

Published on: December 15, 2023

515
Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography
04:48

Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography

Published on: November 30, 2022

2.7K

Related Experiment Videos

Last Updated: Jun 23, 2025

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images
14:08

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images

Published on: April 13, 2013

42.6K
Author Spotlight: Enhancement of Salient Object Detection for Smart Grid Applications
03:31

Author Spotlight: Enhancement of Salient Object Detection for Smart Grid Applications

Published on: December 15, 2023

515
Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography
04:48

Application of Deep Learning-Based Medical Image Segmentation via Orbital Computed Tomography

Published on: November 30, 2022

2.7K

Area of Science:

  • Computer Vision
  • 3D Data Processing
  • Machine Learning

Background:

  • 3D modeling advancements impact VR, diagnosis, and architecture.
  • Distortions from simplification/compression degrade 3D point cloud quality.
  • Objective quality assessment methods are crucial for distorted 3D data.

Purpose of the Study:

  • To develop a novel no-reference (NR) deep learning methodology for 3D point cloud quality assessment.
  • To address the need for reliable and efficient objective quality evaluation of distorted 3D point clouds.
  • To improve the accuracy of quality assessment for 3D models used in various applications.

Main Methods:

  • Extraction of geometric and perceptual attributes from distorted 3D point clouds.
  • Representation of attributes as 1D vectors for feature extraction.
  • Application of transfer learning with a 1D convolutional neural network (1D CNN) adapted from 2D CNNs.
  • Quality score prediction using regression with fully connected layers.

Main Results:

  • The proposed NR method demonstrates superior performance in 3D point cloud quality assessment.
  • The approach shows enhanced correlation with average opinion scores across multiple datasets.
  • Evaluated on SJTU_PCQA, WPC, and ICIP2020 databases, achieving state-of-the-art results.

Conclusions:

  • The deep learning-based NR method provides an effective solution for 3D point cloud quality assessment.
  • The methodology offers a reliable and efficient way to evaluate distortions in 3D models.
  • This work contributes to the advancement of objective quality evaluation for 3D data.