578 research outputs found

    Pattern Recognition of Surgically Altered Face Images Using Multi-Objective Evolutionary Algorithm

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    Plastic surgery has been recently coming up with a new and important aspect of face recognition alongside pose, expression, illumination, aging and disguise. Plastic surgery procedures changes the texture, appearance and the shape of different facial regions. Therefore, it is difficult for conventional face recognition algorithms to match a post-surgery face image with a pre-surgery face image. The non-linear variations produced by plastic surgery procedures are hard to be addressed using current face recognition algorithms. The multi-objective evolutionary algorithm is a novel approach for pattern recognition of surgically altered face images. The algorithms starts with generating non-disjoint face granules and two feature extractors EUCLBP (Extended Uniform Circular Local Binary Pattern) and SIFT (Scale Invariant Feature Transform), are used to extract discriminating facial information from face granules. DOI: 10.17762/ijritcc2321-8169.150316

    Recognizing Surgically Altered Face Images and 3D Facial Expression Recognition

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    AbstractAltering Facial appearances using surgical procedures are common now days. But it raised challenges for face recognition algorithms. Plastic surgery introduces non linear variations. Because of these variations it is difficult to be modeled by the existing face recognition system. Here presents a multi objective evolutionary granular algorithm. It operates on several granules extracted from a face images at multiple level of granularity. This granular information is unified in an evolutionary manner using multi objective genetic approach. Then identify the facial expression from the face images. For that 3D facial shapes are considering here. A novel automatic feature selection method is proposed based on maximizing the average relative entropy of marginalized class-conditional feature distributions and apply it to a complete pool of candidate features composed of normalized Euclidian distances between 83 facial feature points in the 3D space. A regularized multi-class AdaBoost classification algorithm is used here to get the highest average recognition rate

    Granular Approach for Recognizing Surgically Altered Face Images Using Keypoint Descriptors and Artificial Neural Network

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    This chapter presents a new technique called entropy volume-based scale-invariant feature transform for correct face recognition post cosmetic surgery. The comparable features taken are the key points and volume of the Difference of Gaussian (DOG) structure for those points the information rate is confirmed. The information extracted has a minimum effect on uncertain changes in the face since the entropy is the higher-order statistical feature. Then the extracted corresponding entropy volume-based scale-invariant feature transform features are applied and provided to the support vector machine for classification. The normal scale-invariant feature transform feature extracts the key points based on dissimilarity which is also known as the contrast of the image, and the volume-based scale-invariant feature transform (V-SIFT) feature extracts the key points based on the volume of the structure. However, the EV-SIFT method provides both the contrast and volume information. Thus, EV-SIFT provides better performance when compared with principal component analysis (PCA), normal scale-invariant feature transform (SIFT), and V-SIFT-based feature extraction. Since it is well known that the artificial neural network (ANN) with Levenberg-Marquardt (LM) is a powerful computation tool for accurate classification, it is further used in this technique for better classification results

    EV-SIFT - An Extended Scale Invariant Face Recognition for Plastic Surgery Face Recognition

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    Automatic recognition of people faces many challenging problems which has experienced much attention due to many applications in different fields during recent years. Face recognition is one of those challenging problem which does not have much technique to solve all situations like pose, expression, and illumination changes, and/or ageing. Facial expression due to plastic surgery is one of the additional challenges which arise recently. This paper presents a new technique for accurate face recognition after the plastic surgery. This technique uses Entropy based SIFT (EV-SIFT) features for the recognition purpose. The corresponding feature extracts the key points and volume of the scale-space structure for which the information rate is determined. This provides least effect on uncertain variations in the face since the entropy is the higher order statistical feature. The corresponding EV-SIFT features are applied to the Support vector machine for classification. The normal SIFT feature extracts the key points based on the contrast of the image and the V- SIFT feature extracts the key points based on the volume of the structure. But the EV- SIFT method provides the contrast and volume information. This technique provides better performance when compare with PCA, normal SIFT and V-SIFT based feature extraction

    A New 3D Tool for Planning Plastic Surgery

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    Face plastic surgery (PS) plays a major role in today medicine. Both for reconstructive and cosmetic surgery, achieving harmony of facial features is an important, if not the major goal. Several systems have been proposed for presenting to patient and surgeon possible outcomes of the surgical procedure. In this paper, we present a new 3D system able to automatically suggest, for selected facial features as nose, chin, etc, shapes that aesthetically match the patient's face. The basic idea is suggesting shape changes aimed to approach similar but more harmonious faces. To this goal, our system compares the 3D scan of the patient with a database of scans of harmonious faces, excluding the feature to be corrected. Then, the corresponding features of the k most similar harmonious faces, as well as their average, are suitably pasted onto the patient's face, producing k+1 aesthetically effective surgery simulations. The system has been fully implemented and tested. To demonstrate the system, a 3D database of harmonious faces has been collected and a number of PS treatments have been simulated. The ratings of the outcomes of the simulations, provided by panels of human judges, show that the system and the underlying idea are effectiv

    On the Robustness of Face Recognition Algorithms Against Attacks and Bias

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    Face recognition algorithms have demonstrated very high recognition performance, suggesting suitability for real world applications. Despite the enhanced accuracies, robustness of these algorithms against attacks and bias has been challenged. This paper summarizes different ways in which the robustness of a face recognition algorithm is challenged, which can severely affect its intended working. Different types of attacks such as physical presentation attacks, disguise/makeup, digital adversarial attacks, and morphing/tampering using GANs have been discussed. We also present a discussion on the effect of bias on face recognition models and showcase that factors such as age and gender variations affect the performance of modern algorithms. The paper also presents the potential reasons for these challenges and some of the future research directions for increasing the robustness of face recognition models.Comment: Accepted in Senior Member Track, AAAI202

    New face recognition descriptor based on edge information for surgically-altered faces in uncontrolled environment

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    Since plastic surgery have increasingly become common in today’s society, existing face recognition systems have to deal with its effect on the features that characterizes a person’s facial identity. Its consequences on face recognition task are that the face images of an individual can turn out to be distinct and may tend towards resembling a different individual. Current research efforts mostly employ the intensity or texture based descriptors. However, with changes in skin-texture as a result of plastic surgery, the intensity or texture based descriptors may prove deficient since they enhance the texture differences between the pre-surgery and post-surgery images of the same individual. In this thesis, the effect of plastic surgery on facial features is modelled using affine operators. On the basis of the near-shape preserving property of the combination of the operators, the following assumption is made: The edge information is minimally influenced by plastic surgery. In order to exploit this information in real-world scenarios, it requires that face images be evenly illuminated. However, an evenly illuminated face image is far from reality on applying existing illumination normalization techniques. Thus, a new illumination normalization technique termed the rgb-Gamma Encoding (rgbGE) is proposed in this thesis. The rgbGE uses a fusion process to combine colour normalization and gamma correction, which are independently adapted to the face image from a new perspective. Subsequently, a new descriptor, namely the Local Edge Gradient Gabor Magnitude (LEGGM), is proposed. The LEGGM descriptor exploits the edge information to obtain intrinsic structural patterns of the face, which are ordinarily hidden in the original face pattern. These patterns are further embedded in the face pattern to obtain the complete face structural information. Then, Gabor encoding process is performed in order to accentuate the discriminative information of the complete face structural pattern. The resulting information is then learned using subspace learning models for effective representation of faces. Extensive experimental analysis of the designed face recognition method in terms of robustness and efficiency is presented with the aid of publicly available plastic surgery data set and other data sets of different cases of facial variation. The recognition performances of the designed face recognition method on the data sets show competitive and superior results over contemporary methods. Using a heterogeneous data set that typifies a real-world scenario, robustness against many cases of face variation is also shown with recognition performances above 90%
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