3,054 research outputs found
Precision and Recall Reject Curves for Classification
For some classification scenarios, it is desirable to use only those
classification instances that a trained model associates with a high certainty.
To obtain such high-certainty instances, previous work has proposed
accuracy-reject curves. Reject curves allow to evaluate and compare the
performance of different certainty measures over a range of thresholds for
accepting or rejecting classifications. However, the accuracy may not be the
most suited evaluation metric for all applications, and instead precision or
recall may be preferable. This is the case, for example, for data with
imbalanced class distributions. We therefore propose reject curves that
evaluate precision and recall, the recall-reject curve and the precision-reject
curve. Using prototype-based classifiers from learning vector quantization, we
first validate the proposed curves on artificial benchmark data against the
accuracy reject curve as a baseline. We then show on imbalanced benchmarks and
medical, real-world data that for these scenarios, the proposed precision- and
recall-curves yield more accurate insights into classifier performance than
accuracy reject curves.Comment: 11 pages, 3 figures. Updated figure label
Signature Verification Approach using Fusion of Hybrid Texture Features
In this paper, a writer-dependent signature verification method is proposed.
Two different types of texture features, namely Wavelet and Local Quantized
Patterns (LQP) features, are employed to extract two kinds of transform and
statistical based information from signature images. For each writer two
separate one-class support vector machines (SVMs) corresponding to each set of
LQP and Wavelet features are trained to obtain two different authenticity
scores for a given signature. Finally, a score level classifier fusion method
is used to integrate the scores obtained from the two one-class SVMs to achieve
the verification score. In the proposed method only genuine signatures are used
to train the one-class SVMs. The proposed signature verification method has
been tested using four different publicly available datasets and the results
demonstrate the generality of the proposed method. The proposed system
outperforms other existing systems in the literature.Comment: Neural Computing and Applicatio
Indexing ensembles of exemplar-SVMs with rejecting taxonomies
Ensembles of Exemplar-SVMs have been used for a wide variety of tasks, such as object detection, segmentation, label transfer and mid-level feature learning. In order to make this technique effective though a large collection of classifiers is needed, which often makes the evaluation phase prohibitive. To overcome this issue we exploit the joint distribution of exemplar classifier scores to build a taxonomy capable of indexing each Exemplar-SVM and enabling a fast evaluation of the whole ensemble. We experiment with the Pascal 2007 benchmark on the task of object detection and on a simple segmentation task, in order to verify the robustness of our indexing data structure with reference to the standard Ensemble. We also introduce a rejection strategy to discard not relevant image patches for a more efficient access to the data
Face recognition technologies for evidential evaluation of video traces
Human recognition from video traces is an important task in forensic investigations and evidence evaluations. Compared with other biometric traits, face is one of the most popularly used modalities for human recognition due to the fact that its collection is non-intrusive and requires less cooperation from the subjects. Moreover, face images taken at a long distance can still provide reasonable resolution, while most biometric modalities, such as iris and fingerprint, do not have this merit. In this chapter, we discuss automatic face recognition technologies for evidential evaluations of video traces. We first introduce the general concepts in both forensic and automatic face recognition , then analyse the difficulties in face recognition from videos . We summarise and categorise the approaches for handling different uncontrollable factors in difficult recognition conditions. Finally we discuss some challenges and trends in face recognition research in both forensics and biometrics . Given its merits tested in many deployed systems and great potential in other emerging applications, considerable research and development efforts are expected to be devoted in face recognition in the near future
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