Saliency Detection With Fully Convolutional Neural Network

06/24/2019
by   Hooman Misaghi, et al.
0

Saliency detection is an important task in image processing as it can solve many problems and it usually is the first step in for other processes. Convolutional neural networks have been proved to be very effective on several image processing tasks such as classification, segmentation, semantic colorization and object manipulation. Besides, using the weights of a pretrained networks is a common practice for enhancing the accuracy of a network. In this paper a fully convolutional neural network which uses a part of VGG-16 is proposed for saliency detection in images.

READ FULL TEXT
research
02/02/2017

A Fast and Compact Saliency Score Regression Network Based on Fully Convolutional Network

Visual saliency detection aims at identifying the most visually distinct...
research
06/27/2019

Dealing with Topological Information within a Fully Convolutional Neural Network

A fully convolutional neural network has a receptive field of limited si...
research
10/01/2019

Research on insect pest image detection and recognition based on bio-inspired methods

Insect pest recognition is necessary for crop protection in many areas o...
research
05/25/2020

The efficiency of deep learning algorithms for detecting anatomical reference points on radiological images of the head profile

In this article we investigate the efficiency of deep learning algorithm...
research
03/05/2017

Perceiving and Reasoning About Liquids Using Fully Convolutional Networks

Liquids are an important part of many common manipulation tasks in human...
research
09/02/2017

Fast Image Processing with Fully-Convolutional Networks

We present an approach to accelerating a wide variety of image processin...
research
05/12/2021

On the reproducibility of fully convolutional neural networks for modeling time-space evolving physical systems

Reproducibility of a deep-learning fully convolutional neural network is...

Please sign up or login with your details

Forgot password? Click here to reset