Javascript must be enabled to continue!
Deep Learning Approach for Submerged Image Enhancement
View through CrossRef
Abstract: Because of underwater pictures application in ocean engineering, ocean research, marine biology, and marine archaeology to name a few, underwater picture enhancement was widely publicized in the last several years. Underwater photos frequently upshot in low contrast, blurred, color distortion, hazy, poor visible images. This is because of light attenuation, absorption, scattering (forward scattering and backward scattering), turbidity, floating particles. As a result, effective underwater picture solution must be developedin order to improve visibility, contrast, and color qualities for greater visual quality and optical attractiveness. Many underwater picture enhancing approaches have been proposed to overcome these challenges; however they all failed to produce accurate results. Hence for this we first undertook a large scale underwater image dataset which is trained by convolution neural network (CNN) and then we have studied and implemented a deep learning approach called very deep super resolution (VDSR) model for improving the color, contrast, and brightness of underwater photos by using different algorithms such as white balance, histogram equalization, and gamma correction respectively. Moreover, our method is compared with the existing method which reveals that our method surpassesthe existing methods Keywords: CNN, gamma correction, histogram equalization, underwater image enhancement, VDSR, white balance
International Journal for Research in Applied Science and Engineering Technology (IJRASET)
Title: Deep Learning Approach for Submerged Image Enhancement
Description:
Abstract: Because of underwater pictures application in ocean engineering, ocean research, marine biology, and marine archaeology to name a few, underwater picture enhancement was widely publicized in the last several years.
Underwater photos frequently upshot in low contrast, blurred, color distortion, hazy, poor visible images.
This is because of light attenuation, absorption, scattering (forward scattering and backward scattering), turbidity, floating particles.
As a result, effective underwater picture solution must be developedin order to improve visibility, contrast, and color qualities for greater visual quality and optical attractiveness.
Many underwater picture enhancing approaches have been proposed to overcome these challenges; however they all failed to produce accurate results.
Hence for this we first undertook a large scale underwater image dataset which is trained by convolution neural network (CNN) and then we have studied and implemented a deep learning approach called very deep super resolution (VDSR) model for improving the color, contrast, and brightness of underwater photos by using different algorithms such as white balance, histogram equalization, and gamma correction respectively.
Moreover, our method is compared with the existing method which reveals that our method surpassesthe existing methods Keywords: CNN, gamma correction, histogram equalization, underwater image enhancement, VDSR, white balance.
Related Results
[RETRACTED] Rhino XL Male Enhancement v1
[RETRACTED] Rhino XL Male Enhancement v1
[RETRACTED]Rhino XL Reviews, NY USA: Studies show that testosterone levels in males decrease constantly with growing age. There are also many other problems that males face due ...
Cavitation in Submerged Water Jet at High Jet Pressure
Cavitation in Submerged Water Jet at High Jet Pressure
Recent industrial applications have unfolded a promising prospect for submerged water jet. Apart from widely acknowledged water jet properties, submerged water jet is characterized...
Incidental Collocation Learning from Different Modes of Input and Factors That Affect Learning
Incidental Collocation Learning from Different Modes of Input and Factors That Affect Learning
Collocations, i.e., words that habitually co-occur in texts (e.g., strong coffee, heavy smoker), are ubiquitous in language and thus crucial for second/foreign language (L2) learne...
Double Exposure
Double Exposure
I. Happy Endings
Chaplin’s Modern Times features one of the most subtly strange endings in Hollywood history. It concludes with the Tramp (Chaplin) and the Gamin (Paulette Godda...
Growth of Microcystis strains isolated from environments with the presence and absence of submerged macrophytes in coexistence with Ceratophyllum demersum
Growth of Microcystis strains isolated from environments with the presence and absence of submerged macrophytes in coexistence with Ceratophyllum demersum
Cyanobacterial blooms can cause severe ecological and health problems in drinking water reservoirs. To alleviate this problem, allelopathically active submerged macrophytes can be ...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
Implementasi Convolutional Neural Network dalam Mengenali Image Angka Tulisan Tangan
Implementasi Convolutional Neural Network dalam Mengenali Image Angka Tulisan Tangan
Abstract. Advances in information technology and artificial intelligence, particularly in the field of machine learning, have had a significant impact on various aspects of daily l...
Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...


