image-segmentation   21

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[1203.0856] Online Discriminative Dictionary Learning for Image Classification Based on Block-Coordinate Descent Method
"Previous researches have demonstrated that the framework of dictionary learning with sparse coding, in which signals are decomposed as linear combinations of a few atoms of a learned dictionary, is well adept to reconstruction issues. This framework has also been used for discrimination tasks such as image classification. To achieve better performances of classification, experts develop several methods to learn a discriminative dictionary in a supervised manner. However, another issue is that when the data become extremely large in scale, these methods will be no longer effective as they are all batch-oriented approaches. For this reason, we propose a novel online algorithm for discriminative dictionary learning, dubbed textbf{ODDL} in this paper. First, we introduce a linear classifier into the conventional dictionary learning formulation and derive a discriminative dictionary learning problem. Then, we exploit an online algorithm to solve the derived problem. Unlike the most existing approaches which update dictionary and classifier alternately via iteratively solving sub-problems, our approach directly explores them jointly. Meanwhile, it can largely shorten the runtime for training and is also particularly suitable for large-scale classification issues. To evaluate the performance of the proposed ODDL approach in image recognition, we conduct some experiments on three well-known benchmarks, and the experimental results demonstrate ODDL is fairly promising for image classification tasks."
image-analysis  image-segmentation  algorithms  nudge-targets 
9 weeks ago by Vaguery
[1203.3270] Extraction of Facial Feature Points Using Cumulative Histogram
"This paper proposes a novel adaptive algorithm to extract facial feature points automatically such as eyebrows corners, eyes corners, nostrils, nose tip, and mouth corners in frontal view faces, which is based on cumulative histogram approach by varying different threshold values. At first, the method adopts the Viola-Jones face detector to detect the location of face and also crops the face region in an image. From the concept of the human face structure, the six relevant regions such as right eyebrow, left eyebrow, right eye, left eye, nose, and mouth areas are cropped in a face image. Then the histogram of each cropped relevant region is computed and its cumulative histogram value is employed by varying different threshold values to create a new filtering image in an adaptive way. The connected component of interested area for each relevant filtering image is indicated our respective feature region. A simple linear search algorithm for eyebrows, eyes and mouth filtering images and contour algorithm for nose filtering image are applied to extract our desired corner points automatically. The method was tested on a large BioID frontal face database in different illuminations, expressions and lighting conditions and the experimental results have achieved average success rates of 95.27%."
image-segmentation  image-analysis  face-recognition  algorithms  nudge-targets 
9 weeks ago by Vaguery
[1112.6272] A Majorize-Minimize subspace approach for l2-l0 image regularization
In this work, we have considered a class of smooth nonconvex regularization functions and we have proposed an efficient minimization stategy for solving the associated variational problems in imaging applications. Connections with l0 penalized problems have been shown asymptoti- cally. In addition, a novel convergence proof of the proposed subspace MM algorithm relying on the Kurdyka-L􏰄 ojasiewicz inequality has been given. Numerical experiments have been carried out to compare the proposed approach with other state-of-the art continuous optimization meth- ods (both for nonconvex and convex penalizations) and with discrete optimization approaches dealing with a truncated quadratic penalization. In the four presented image processing exam- ples, we argue that the proposed approach constitutes an appealing alternative to the existing methods in terms of recovered image quality and computational time.
image-processing  image-segmentation  algorithms  to-understand  nudge-targets 
january 2012 by Vaguery
[1112.5794] BATMAN-an R package for the automated quantification of metabolites from NMR spectra using a Bayesian Model
Motivation: NMR spectra are widely used in metabolomics to obtain metabolite profiles in complex biological mixtures. Common methods used to assign and estimate concentrations of metabolite involve either an expert manual peak fitting or extra pre-processing steps, such as peak alignment and binning. Peak fitting is very time consuming and is subject to human error. Conversely, alignment and binning can introduce artifacts and limit immediate biological interpretation of models. Results: We present the Bayesian AuTomated Metabolite Analyser for NMR spectra (BATMAN), an R package which deconvolves peaks from 1-dimensional NMR spectra, automatically assigns them to specific metabolites and obtains concentration estimates. The Bayesian model incorporates information on characteristic peak patterns of metabolites and is able to account for shifts in the position of peaks commonly seen in NMR spectra of biological samples. It applies a Markov Chain Monte Carlo (MCMC) algorithm to sample from a joint posterior distribution of the model parameters and obtains concentration estimates with reduced mean estimation error compared with conventional numerical integration methods.
learning-from-data  statistics  modeling  biochemistry  nudge-targets  image-segmentation 
january 2012 by Vaguery
[1112.6209] Building high-level features using large scale unsupervised learning
We consider the problem of building detectors for high-level concepts using only unsupervised feature learning. For example, we would like to understand if it is possible to learn a face detector using only unlabeled images downloaded from the internet. To answer this question, we trained a simple feature learning algorithm on a large dataset of images (10 million images, each image is 200x200). The simulation is performed on a cluster of 1000 machines with fast network hardware for one week. Extensive experimental results reveal surprising evidence that such high-level concepts can indeed be learned using only unlabeled data and a simple learning algorithm.
image-analysis  image-segmentation  unsupervised-learning  learning-by-doing  feature-extraction  nudge-targets 
january 2012 by Vaguery
[1106.0371] A Novel Image Segmentation Enhancement Technique based on Active Contour and Topological Alignments
"Topological alignments and snakes are used in image processing, particularly in locating object boundaries. Both of them have their own advantages and limitations. To improve the overall image boundary detection system, we focused on developing a novel algorithm for image processing. The algorithm we propose to develop will based on the active contour method in conjunction with topological alignments method to enhance the image detection approach. The algorithm presents novel technique to incorporate the advantages of both Topological Alignments and snakes. Where the initial segmentation by Topological Alignments is firstly transformed into the input of the snake model and begins its evolvement to the interested object boundary. The results show that the algorithm can deal with low contrast images and shape cells, demonstrate the segmentation accuracy under weak image boundaries, which responsible for lacking accuracy in image detecting techniques. We have achieved better segmentation and boundary detecting for the image, also the ability of the system to improve the low contrast and deal with over and under segmentation."
image-segmentation  algorithms  nudge-targets 
october 2011 by Vaguery
[1107.0414] A random walk on image patches
"In this paper we address the problem of understanding the success of algorithms that organize patches according to graph-based metrics. Algorithms that analyze patches extracted from images or time series have led to state-of-the art techniques for classification, denoising, and the study of nonlinear dynamics. The main contribution of this work is to provide a theoretical explanation for the above experimental observations. Our approach relies on a detailed analysis of the commute time metric on prototypical graph models that epitomize the geometry observed in general patch graphs.…"
image-segmentation  image-analysis  algorithms  combinatorics  nudge-targets 
october 2011 by Vaguery
[1108.0986] A proximal point algorithm for sequential feature extraction applications
"We propose a proximal point algorithm to solve LAROS problem, that is the problem of finding a "large approximately rank-one submatrix". This LAROS problem is used to sequentially extract features in data. We also develop a new stopping criterion for the proximal point algorithm, which is based on the duality conditions of eps-optimal solutions of the LAROS problem, with a theoretical guarantee. We test our algorithm with two image databases and show that we can use the LAROS problem to extract appropriate common features from these images."
algorithms  image-segmentation  feature-extraction  nudge-targets 
october 2011 by Vaguery
[1107.0550] 3D Terrestrial LiDAR data classification of complex natural scenes using a multi-scale dimensionality criterion: applications in geomorphology
"3D point clouds of natural environments relevant to geomorphology problems (rivers, cliffs...) often require to classify the data into elementary relevant classes. A typical example is the separation of riparian vegetation from soil in fluvial environments, the distinction between fresh surfaces and rockfall in cliff environments, or more generally the classification of surfaces according to their morphology (ripples, grain size...). Natural surfaces are very heterogeneous and their distinctive properties are seldom defined at a unique scale. We have thus defined a multi-scale measure of the point cloud dimensionality around each point. The dimensionality characterizes the local 3D organization of the point cloud and varies from being 1D (points set along a line) to really taking all 3D volume, at each scale. We present the technique and illustrate its efficiency in separating riparian vegetation from ground and classifying a mountain stream in vegetation, rock, gravel and water surface. The superiority of the multi-scale analysis in enhancing class separability and spatial resolution of the classification is also demonstrated. Large scenes can be classified on a commodity laptop in a reasonable time. The technique is robust to missing data and especially shadow zones. The classification is fast and accurate and can account for some degree of intra-class morphological variability such as different vegetation types. A probabilistic confidence in the classification result is given at each point allowing the user to remove the points for which the classification is uncertain. The process can be both fully automated but also fully customized by the user including a graphical definition of the classifiers if so desired. Although developed for fully 3D data, the method can be readily applied to 2.5D airborne LiDAR data."
image-analysis  image-segmentation  learning-from-data  classification  nudge-targets 
august 2011 by Vaguery
[1006.5945] Fuzzy Classification of Facial Component Parameters
"This paper presents a novel type-2 Fuzzy logic System to define the Shape of a facial component with the crisp output. This work is the part of our main research effort to design a system (called FASY) which offers a novel face construction approach based on the textual description and also extracts and analyzes the facial components from a face image by an efficient technique. The Fuzzy model, designed in this paper, takes crisp value of width and height of a facial component and produces the crisp value of Shape for different facial components. This method is designed using Matlab 6.5 and Visual Basic 6.0 and tested with the facial components extracted from 200 male and female face images of different ages from different face databases."
face-recognition  nudge-targets  image-processing  image-segmentation  fuzzy-logic  heuristics 
august 2010 by Vaguery
[1007.5129] An Efficient Automatic Mass Classification Method In Digitized Mammograms Using Artificial Neural Network
"In this paper we present an efficient computer aided mass classification method in digitized mammograms using Artificial Neural Network (ANN), which performs benign-malignant classification on region of interest (ROI) that contains mass. One of the major mammographic characteristics for mass classification is texture. ANN exploits this important factor to classify the mass into benign or malignant. The statistical textural features used in characterizing the masses are mean, standard deviation, entropy, skewness, kurtosis and uniformity.…"
medical-technology  nudge-targets  image-segmentation  image-analysis  radiology  diagnostics 
august 2010 by Vaguery
[1007.0621] Fusion of Daubechies Wavelet Coefficients for Human Face Recognition
"In this paper fusion of visual and thermal images in wavelet transformed domain has been presented. Here, Daubechies wavelet transform, called as D2, coefficients from visual and corresponding coefficients computed in the same manner from thermal images are combined to get fused coefficients. After decomposition up to fifth level (Level 5) fusion of coefficients is done. Inverse Daubechies wavelet transform of those coefficients gives us fused face images. The main advantage of using wavelet transform is that it is well-suited to manage different image resolution and allows the image decomposition in different kinds of coefficients, while preserving the image information.…"
image-processing  image-segmentation  nudge-targets  algorithms  optimization  classification 
august 2010 by Vaguery
[1007.0636] Classification of Log-Polar-Visual Eigenfaces using Multilayer Perceptron
"In this paper we present a simple novel approach to tackle the challenges of scaling and rotation of face images in face recognition. The proposed approach registers the training and testing visual face images by log-polar transformation, which is capable to handle complicacies introduced by scaling and rotation. Log-polar images are projected into eigenspace and finally classified using an improved multi-layer perceptron. In the experiments we have used ORL face database and Object Tracking and Classification Beyond Visible Spectrum (OTCBVS) database for visual face images. Experimental results show that the proposed approach significantly improves the recognition performances from visual to log-polar-visual face images. …"
image-processing  nudge-targets  algorithms  machine-learning  security  image-segmentation 
august 2010 by Vaguery
[1007.1708] A Study on the Effectiveness of Different Patch Size and Shape for Eyes and Mouth Detection
"Template matching is one of the simplest methods used for eyes and mouth detection. However, it can be modified and extended to become a powerful tool. Since the patch itself plays a significant role in optimizing detection performance, a study on the influence of patch size and shape is carried out. The optimum patch size and shape is determined using the proposed method. Usually, template matching is also combined with other methods in order to improve detection accuracy. Thus, in this paper, the effectiveness of two image processing methods i.e. grayscale and Haar wavelet transform, when used with template matching are analyzed."
nudge-targets  image-processing  image-segmentation  machine-learning  algorithms 
august 2010 by Vaguery
[1007.0547] A Fast Decision Technique for Hierarchical Hough Transform for Line Detection
"Many techniques have been proposed to speedup the performance of classic Hough Transform. These techniques are primarily based on converting the voting procedure to a hierarchy based voting method. These methods use approximate decision-making process. In this paper, we propose a fast decision making process that enhances the speed and reduces the space requirements. Experimental results demonstrate that the proposed algorithm is much faster than a similar Fast Hough Transform."
algorithms  image-processing  image-segmentation  nudge-targets 
july 2010 by Vaguery
[1006.4588] Efficient Region-Based Image Querying
"Retrieving images from large and varied repositories using visual contents has been one of major research items, but a challenging task in the image management community. In this paper we present an efficient approach for region-based image classification and retrieval using a fast multi-level neural network model. The advantages of this neural model in image classification and retrieval domain will be highlighted. The proposed approach accomplishes its goal in three main steps. First, with the help of a mean-shift based segmentation algorithm, significant regions of the image are isolated. Secondly, color and texture features of each region are extracted by using color moments and 2D wavelets decomposition technique. Thirdly the multi-level neural classifier is trained in order to classify each region in a given image into one of five predefined categories, i.e., "Sky", "Building", "SandnRock", "Grass" and "Water". …"
image-processing  image-segmentation  search-algorithms  databases  algorithms  nudge-targets 
july 2010 by Vaguery
[1006.4175] Optimization of Weighted Curvature for Image Segmentation
"Minimization of boundary curvature is a classic regularization technique for image segmentation in the presence of noisy image data. Techniques for minimizing curvature have historically been derived from descent methods which could be trapped in a local minimum and therefore required a good initialization. Recently, combinatorial optimization techniques have been applied to the optimization of curvature which provide a solution that achieves nearly a global optimum. However, when applied to image segmentation these methods required a meaningful data term. Unfortunately, for many images, particularly medical images, it is difficult to find a meaningful data term. Therefore, we propose to remove the data term completely and instead weight the curvature locally, while still achieving a global optimum."
image-segmentation  image-analysis  classification  machine-learning  algorithms  nudge-targets  medical-technology 
june 2010 by Vaguery
The Berkeley Segmentation Dataset and Benchmark
"The goal of this work is to provide an empirical basis for research on image segmentation and boundary detection. To this end, we have collected 12,000 hand-labeled segmentations of 1,000 Corel dataset images from 30 human subjects. Half of the segmentations were obtained from presenting the subject with a color image; the other half from presenting a grayscale image. The public benchmark based on this data consists of all of the grayscale and color segmentations for 300 images. The images are divided into a training set of 200 images, and a test set of 100 images."
dataset  learning-from-data  training-set  machine-learning  image-segmentation  image-processing  nudge 
june 2010 by Vaguery
[1006.3679] Segmentation of Natural Images by Texture and Boundary Compression
"We present a novel algorithm for segmentation of natural images that harnesses the principle of minimum description length (MDL). Our method is based on observations that a homogeneously textured region of a natural image can be well modeled by a Gaussian distribution and the region boundary can be effectively coded by an adaptive chain code. The optimal segmentation of an image is the one that gives the shortest coding length for encoding all textures and boundaries in the image, and is obtained via an agglomerative clustering process applied to a hierarchy of decreasing window sizes as multi-scale texture features. The optimal segmentation also provides an accurate estimate of the overall coding length and hence the true entropy of the image. We test our algorithm on the publicly available Berkeley Segmentation Dataset. It achieves state-of-the-art segmentation results compared to other existing methods."
algorithms  image-segmentation  numerical-methods  machine-learning  image-compression  nudge-targets  dataset 
june 2010 by Vaguery
[1006.1346] C-HiLasso: A Collaborative Hierarchical Sparse Modeling Framework
"Sparse modeling is a powerful framework for data analysis and processing. Traditionally, encoding in this framework is performed by solving an L1-regularized linear regression problem, commonly referred to as Lasso or Basis Pursuit. In this work we combine the sparsity-inducing property of the Lasso model at the individual feature level, with the block-sparsity property of the Group Lasso model, where sparse groups of features are jointly encoded, obtaining a sparsity pattern hierarchically structured. This results in the Hierarchical Lasso (HiLasso), which shows important practical modeling advantages.…"
numerical-methods  statistics  learning-from-data  machine-learning  image-processing  image-segmentation  nudge-targets 
june 2010 by Vaguery

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