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Journal ArticleDOI

Face Sketch Recognition Using Computer Vision

K S Meghana
- 25 Jul 2021 - 
- Vol. 9, pp 2005-2009
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TLDR
The project describes the design of a system for face sketch recognition by a computer vision approach like Discrete Cosine Transform (DCT), Local Binary Pattern Histogram (LBPH) algorithm and a supervised machine learning model called Support Vector Machine (SVM) for face recognition.
Abstract
Now-a-days need for technologies for identification, detection and recognition of suspects has increased. One of the most common biometric techniques is face recognition, since face is the convenient way used by the people to identify each-other. Understanding how humans recognize face sketches drawn by artists is of significant value to both criminal investigators and forensic researchers in Computer Vision. However, studies say that hand-drawn face sketches are still very limited in terms of artists and number of sketches because after any incident a forensic artist prepares a victim’s sketches on behalf of the description provided by an eyewitness. Sometimes suspect uses special mask to hide some common features of faces like nose, eyes, lips, face-color etc. but the outliner features of face biometrics one could never hide. Here we concentrate on some specific facial geometric feature which could be used to calculate some ratio of similarities from the template photograph database against the forensic sketches. The project describes the design of a system for face sketch recognition by a computer vision approach like Discrete Cosine Transform (DCT), Local Binary Pattern Histogram (LBPH) algorithm and a supervised machine learning model called Support Vector Machine (SVM) for face recognition. Tkinter is the standard GUI library for Python. Python when combined with Tkinter provides a fast and easy way to create GUI applications. Tkinter provides a powerful object-oriented interface to the Tk GUI toolkit.

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References
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Proceedings ArticleDOI

Coupled information-theoretic encoding for face photo-sketch recognition

TL;DR: A new face descriptor based on coupled information-theoretic encoding is used to capture discriminative local face structures and to effectively match photos and sketches by reducing the modality gap at the feature extraction stage.
Journal ArticleDOI

Matching Forensic Sketches to Mug Shot Photos

TL;DR: Compared to a leading commercial face recognition system, LFDA offers substantial improvements in matching forensic sketches to the corresponding face images and leads to state-of-the-art accuracys when matching viewed sketches.
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Face Recognition Using Haar Cascade Classifier

TL;DR: This paper presents face recognition application using optimized amount of resources and high efficiency using Open CV, Raspberry Pi, Haar Cascade Classifier.
Journal ArticleDOI

Matching composite sketches to facial photos using component-based approach

TL;DR: A component-based representation (CBR) approach to measure the similarity score between a composite sketch and mugshot photograph is proposed and instead of comparing whole image at the same time, facial components from dataset will be compare for matching.
Journal ArticleDOI

Matching Facial Composite Sketches to Police Mug-Shot Images Based on Geometric Features

TL;DR: A novel approach for matching facial composite sketches to police mug-shot images based on Geometric Features, which has useful applications for both law enforcement and digital entertainment.