2015
DOI: 10.1109/tpami.2014.2382106
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Robust and Accurate Shape Model Matching Using Random Forest Regression-Voting

Abstract: A widely used approach for locating points on deformable objects in images is to generate feature response images for each point, and then to fit a shape model to these response images. We demonstrate that Random Forest regression-voting can be used to generate high quality response images quickly. Rather than using a generative or a discriminative model to evaluate each pixel, a regressor is used to cast votes for the optimal position of each point. We show that this leads to fast and accurate shape model mat… Show more

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Cited by 208 publications
(126 citation statements)
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“…It is important to note that different pathology grades have very narrow intervals so even a slight shift in landmark location can change the pathology assessment result. As another random-forest based approach, the method approached by Lindner et al, 37 yields a slightly higher success detection range for high ranges and consequently a better performance in pathology assessment. It should be noted that they combined a random forest-based intensity model with a different shape model, hence it is hard to assess whether the performance difference is due to the intensity appearance model or the shape model.…”
Section: Discussionmentioning
confidence: 99%
“…It is important to note that different pathology grades have very narrow intervals so even a slight shift in landmark location can change the pathology assessment result. As another random-forest based approach, the method approached by Lindner et al, 37 yields a slightly higher success detection range for high ranges and consequently a better performance in pathology assessment. It should be noted that they combined a random forest-based intensity model with a different shape model, hence it is hard to assess whether the performance difference is due to the intensity appearance model or the shape model.…”
Section: Discussionmentioning
confidence: 99%
“…L2,1 norm based kernel SVR is presented by Martinez et al [19] to substitute the commonly used least squares regressor, which improves the performance of face alignment across views. Gaussian process [20,21] and Random Forest voting [14,22,23] are also introduced into cascaded regression framework. Zhang et al [34] and Zhu et al [30] further study hierarchical or coarse-to-fine searching for face alignment.…”
Section: Multi-pose Face Alignmentmentioning
confidence: 99%
“…The choice and learning of shape-indexed features are also studied [15][16][17]. A series of regression methods have been employed into cascaded regression framework to deal with over-fitting and local minima problems in the wild condition, including ridge regression [18], Support Vector [19], Gaussian process [20,21], Random Forest voting [14,22,23], Deep Neural Nets [16,24,25], and project-out cascaded regression [26].…”
Section: Introductionmentioning
confidence: 99%
“…We evaluated the detection accuracy of the CNN model by comparing the linear support vector machine (SVM) [20], [21] and random forest [22]- [25]. First, we introduced the accuracy of linear SVM and random forest.…”
Section: Detection Accuracymentioning
confidence: 99%