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

Dense Connective Tissue01:13

Dense Connective Tissue

7.9K
Dense connective tissue contains more collagen fibers than loose connective tissue. As a consequence, it displays greater resistance to stretching. There are two major categories of dense connective tissue— regular and irregular.
Dense Regular Connective Tissue
In dense regular connective tissue, fibers are arranged parallel to each other, enhancing its tensile strength and resistance to stretching in the direction of the fiber orientations. Ligaments and tendons are made of dense regular...
7.9K
Prediction Intervals01:03

Prediction Intervals

2.3K
The interval estimate of any variable is known as the prediction interval. It helps decide if a point estimate is dependable.
However, the point estimate is most likely not the exact value of the population parameter, but close to it. After calculating point estimates, we construct interval estimates, called confidence intervals or prediction intervals. This prediction interval comprises a range of values unlike the point estimate and is a better predictor of the observed sample value, y. 
2.3K
Convolution: Math, Graphics, and Discrete Signals01:24

Convolution: Math, Graphics, and Discrete Signals

305
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...
305
Convolution Properties I01:20

Convolution Properties I

190
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:
190
Convolution Properties II01:17

Convolution Properties II

240
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...
240
Neural Circuits01:25

Neural Circuits

1.3K
Neural circuits and neuronal pools are two of the main structures found in the nervous system. Neural circuits are networks of neurons that work together to carry out a specific task or process. They consist of interconnected neurons and glial cells, which provide structural and metabolic support.
Neuronal pools are collections of nerve cells with similar functions and interact through chemical and electrical signals. These pools include both interneurons (the central neural circuit nodes that...
1.3K

You might also read

Related Articles

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

Sort by
Same author

Early macular microvascular attenuation in moderate myopia: projection artifact-removed and magnification-corrected optical coherence tomography angiography in an Iranian adult cohort.

BMC ophthalmology·2026
Same author

The impact of the PI3K/AKT/mTOR signaling pathway on trastuzumab resistance in HER2-positive gastric cancer.

Clinical & translational oncology : official publication of the Federation of Spanish Oncology Societies and of the National Cancer Institute of Mexico·2026
Same author

Effect of Niacin Supplementation During In Vitro Maturation on Fertilization Rate and Mitochondrial Competence of Vitrified and Nonvitrified Bovine Oocytes.

Veterinary medicine international·2026
Same author

Comment on Ulas et al. Prognostic Insights into Orbital Metastases: A Comprehensive Analysis of Clinical Features and Survival Outcomes. <i>Diagnostics</i> 2025, <i>15</i>, 2542.

Diagnostics (Basel, Switzerland)·2026
Same author

Incorporating environmental costs into long-term open-pit mine planning for sustainable resource optimization.

Scientific reports·2026
Same author

Comment on "Management and outcomes of ocular surface squamous neoplasia" by Höllhumer et al. (Eye, 2025).

Eye (London, England)·2026
Same journal

Automated Behavior Analysis in the Novel Object Recognition Test.

Neurocomputing·2026
Same journal

CrunchLLM: Multitask LLMs for Structured Business Reasoning and Outcome Prediction.

Neurocomputing·2026
Same journal

Deep Learning for analyzing chaotic dynamics in biological time series: Insights from frog heart signals.

Neurocomputing·2026
Same journal

SymRefine: A symbolic regression approach for refining and compressing neural networks.

Neurocomputing·2026
Same journal

Artificial intelligence without restriction surpassing human intelligence with probability one: Theoretical insight into secrets of the brain with AI twins of the brain.

Neurocomputing·2025
Same journal

ShaderNN: A Lightweight and Efficient Inference Engine for Real-time Applications on Mobile GPUs.

Neurocomputing·2025
See all related articles

Related Experiment Video

Updated: Jul 26, 2025

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

586

DDCNet: Deep Dilated Convolutional Neural Network for Dense Prediction.

Ali Salehi1, Madhusudhanan Balasubramanian1

  • 1Department of Electrical and Computer Engineering, The University of Memphis, Memphis TN 38152.

Neurocomputing
|June 19, 2023
PubMed
Summary
This summary is machine-generated.

This study introduces a novel network architecture for computer vision tasks like optical flow estimation. The proposed design uses dilated convolutions to achieve a larger effective receptive field (ERF) with fewer parameters, resulting in lightweight yet effective models.

Keywords:
Dense predictioncompact networkdilated convolutiongridding artifactnetwork receptive fieldoptical flow estimation

More Related Videos

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images
08:20

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images

Published on: October 27, 2023

1.5K
Deep Neural Networks for Image-Based Dietary Assessment
13:19

Deep Neural Networks for Image-Based Dietary Assessment

Published on: March 13, 2021

9.3K

Related Experiment Videos

Last Updated: Jul 26, 2025

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

586
Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images
08:20

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images

Published on: October 27, 2023

1.5K
Deep Neural Networks for Image-Based Dietary Assessment
13:19

Deep Neural Networks for Image-Based Dietary Assessment

Published on: March 13, 2021

9.3K

Area of Science:

  • Computer Vision
  • Deep Learning
  • Image Processing

Background:

  • Dense pixel matching, including optical flow and disparity estimation, presents significant challenges in computer vision.
  • Deep learning methods have shown recent success in addressing these dense estimation tasks.
  • Larger effective receptive fields (ERFs) and high spatial feature resolution are crucial for accurate, high-resolution dense predictions.

Purpose of the Study:

  • To present a systematic approach for designing network architectures that enhance the effective receptive field (ERF) while preserving high spatial feature resolution.
  • To develop compact deep learning models for dense pixel matching tasks.

Main Methods:

  • Utilized dilated convolutional layers to systematically increase the effective receptive field (ERF).
  • Aggressively increased dilation rates in deeper network layers to achieve a larger ERF efficiently.
  • Employed the optical flow estimation problem as a benchmark to validate the network design strategy.

Main Results:

  • The proposed network architectures achieve a significantly larger ERF with a reduced number of trainable parameters.
  • Compact networks demonstrate comparable performance to existing lightweight models on benchmark datasets.
  • Validated performance on challenging benchmarks including Sintel, KITTI, and Middlebury datasets.

Conclusions:

  • The developed network design strategy effectively balances ERF expansion and spatial resolution maintenance.
  • The proposed compact networks offer a promising solution for efficient and high-performance dense estimation in computer vision.
  • The approach provides a viable alternative for lightweight models in optical flow and disparity estimation.