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Journal ArticleDOI

Shadow Detection and Removal Based on YCbCr Color Space

Kaushik Deb, +1 more
- 01 Feb 2014 - 
- Vol. 4, Iss: 1, pp 23-33
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TLDR
The most salient feature of the proposed framework is that after removing shadows, there is no harsh transition between the shadowed parts and non-shadowed parts, and all the details in theShadowed regions remain intact.
Abstract
Shadows in an image can reveal information about the object’s shape and orientation, and even about the light source. Thus shadow detection and removal is a very crucial and inevitable task of some computer vision algorithms for applications such as image segmentation and object detection and tracking. This paper proposes a simple framework using the luminance, chroma: blue, chroma: red (YCbCr) color space to detect and remove shadows from images. Initially, an approach based on statistics of intensity in the YCbCr color space is proposed for detecting shadows. After the shadows are identified, a shadow density model is applied. According to the shadow density model, the image is segmented into several regions that have the same density. Finally, the shadows are removed by relighting each pixel in the YCbCr color space and correcting the color of the shadowed regions in the red-green-blue (RGB) color space. The most salient feature of our proposed framework is that after removing shadows, there is no harsh transition between the shadowed parts and non-shadowed parts, and all the details in the shadowed regions remain intact. Various shadow images were used with a variety of conditions (i.e. outdoor and semi-indoor) to test the proposed framework, and results are presented to prove its effectiveness.

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Citations
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Journal ArticleDOI

Convolutional Neural Network-Based Shadow Detection in Images Using Visible Light Camera Sensor.

TL;DR: A convolutional neural network-based shadow detection method that outperforms previous works by overcoming various environmental factors such as illumination change and brightness of background that cause detection to be a difficult task.
Journal ArticleDOI

Shadow Detection and Removal for Illumination Consistency on the Road

TL;DR: Support Vector Machine (SVM) based on color saliency space and gradient field to detect shadow and remove shadow is employed, feasible in the real world, and robust to many types of road conditions.
Proceedings ArticleDOI

Shadow detection and removal for illumination consistency on the road

TL;DR: This paper attempts to detect shadows with Support Vector Machine (SVM) based on color saliency space and gradient field and shows good feasibility and adaptability, and the method performs well under a variety of road environment.
Journal ArticleDOI

Automatic shadow detection and removal using image matting

TL;DR: This paper presents an automatic method to extract and remove shadows from real images using the tricolor attenuation model (TAM) and intensity information and accurately preserves the color and texture of the images under variety of scenarios without user intervention.
Journal ArticleDOI

Towards an evaluation of bedload transport characteristics by using Doppler and backscatter outputs from ADCPs

TL;DR: In this article, the apparent bedload velocity and backscattering strength measured by acoustic Doppler current profilers were used to assist bedload assessment in the field, and two ADCPs were tested to test this hypothesis.
References
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Journal ArticleDOI

On the removal of shadows from images

TL;DR: This paper shows how to recover a 3D, full color shadow-free image representation by first (with the help of the 2D representation) identifying shadow edges and proposing a method to reintegrate this thresholded edge map, thus deriving the sought-after 3D shadow- free image.
Book ChapterDOI

Removing Shadows from Images

TL;DR: It is shown that a good calibration can be achieved simply by recording a sequence of images of a fixed outdoor scene over the course of a day, and that the resulting calibration is close to that achievable using measurements of the camera's sensitivity functions.
Journal ArticleDOI

Entropy Minimization for Shadow Removal

TL;DR: This work seeks that projection which produces a type of intrinsic, independent of lighting reflectance-information only image by minimizing entropy, and from there go on to remove shadows as previously, and goes over to the quadratic entropy, rather than Shannon's definition.
Proceedings ArticleDOI

Single-image shadow detection and removal using paired regions

TL;DR: This paper addressed the problem of shadow detection and removal from single images of natural scenes by employing a region based approach, and created a new dataset with shadow-free ground truth images, which provides a quantitative basis for evaluating shadow removal.
Proceedings ArticleDOI

Learning to recognize shadows in monochromatic natural images

TL;DR: Results show shadowed areas of an image can be identified using proposed monochromatic cues, which are used to train a classifier from boosting a decision tree and integrated into a Conditional random Field, which can enforce local consistency over pixel labels.
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