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Mohammad Alkhatib

Bio: Mohammad Alkhatib is an academic researcher from University of Orléans. The author has contributed to research in topics: Homogeneous coordinates & Binary pattern. The author has an hindex of 5, co-authored 12 publications receiving 36 citations. Previous affiliations of Mohammad Alkhatib include Universiti Putra Malaysia & Islamic University.

Papers
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Journal ArticleDOI
TL;DR: In this paper, a robust adaptive median binary pattern (RAMBP) was proposed to handle images with highly noisy textures and increase the discriminative properties by capturing microstructure and macrostructure texture information.
Abstract: Texture is an important characteristic for different computer vision tasks and applications. Local binary pattern (LBP) is considered one of the most efficient texture descriptors yet. However, LBP has some notable limitations, in particular its sensitivity to noise. In this paper, we address these criteria by introducing a novel texture descriptor, robust adaptive median binary pattern (RAMBP). RAMBP is based on a process involving classification of noisy pixels, adaptive analysis window, scale analysis, and a comparison of image medians. The proposed method handles images with highly noisy textures and increases the discriminative properties by capturing microstructure and macrostructure texture information. The method was evaluated on popular texture datasets for classification and retrieval tasks and under different high noise conditions. Without any training or prior knowledge of the noise type, RAMBP achieved the best classification compared to state-of-the-art techniques. It scored more than 90% under 50% impulse noise densities, more than 95% under Gaussian noised textures with a standard deviation $\sigma = 5$ , more than 99% under Gaussian blurred textures with a standard deviation $\sigma = 1.25$ , and more than 90% for mixed noise. The proposed method yielded competitive results and proved to be one of the best descriptors in noise-free texture classification. Furthermore, RAMBP showed high performance for the problem of noisy texture retrieval providing high scores of recall and precision measures for textures with high noise levels. Finally, compared with the state-of-the-art methods, RAMBP achieves a good running time with low feature dimensionality.

17 citations

Journal ArticleDOI
TL;DR: This paper presents the first fully automatic nerve tracking method in Ultrasound images by using Adaptive Median Binary Pattern (AMBP) as texture feature for tracking algorithms (particle filter, mean-shift and Kanade-Lucas-Tomasi(KLT)).

14 citations

Journal ArticleDOI
TL;DR: In this paper, Liu et al. introduced a novel texture descriptor, Robust Adaptive Median Binary Pattern (RAMBP), based on classification process of noisy pixels, adaptive analysis window, scale analysis and image regions median comparison.
Abstract: Texture is an important cue for different computer vision tasks and applications. Local Binary Pattern (LBP) is considered one of the best yet efficient texture descriptors. However, LBP has some notable limitations, mostly the sensitivity to noise. In this paper, we address these criteria by introducing a novel texture descriptor, Robust Adaptive Median Binary Pattern (RAMBP). RAMBP based on classification process of noisy pixels, adaptive analysis window, scale analysis and image regions median comparison. The proposed method handles images with high noisy textures, and increases the discriminative properties by capturing microstructure and macrostructure texture information. The proposed method has been evaluated on popular texture datasets for classification and retrieval tasks, and under different high noise conditions. Without any train or prior knowledge of noise type, RAMBP achieved the best classification compared to state-of-the-art techniques. It scored more than $90\%$ under $50\%$ impulse noise densities, more than $95\%$ under Gaussian noised textures with standard deviation $\sigma = 5$, and more than $99\%$ under Gaussian blurred textures with standard deviation $\sigma = 1.25$. The proposed method yielded competitive results and high performance as one of the best descriptors in noise-free texture classification. Furthermore, RAMBP showed also high performance for the problem of noisy texture retrieval providing high scores of recall and precision measures for textures with high levels of noise.

13 citations

Journal ArticleDOI
TL;DR: Overall, deep-learning trackers provide good performance and show a comparative performance for tracking different kinds of nerves in ultrasound images for nerve tracking in UGRA.

13 citations

Journal ArticleDOI
TL;DR: A scalable framework which enables verification of the properties of the cloud platform through a trusted third party without the direct involvement of the client is proposed, which is thin client (mobile device) friendly and lower in order of magnitude when compared with traditional trusted computing based solutions.

7 citations


Cited by
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Journal Article
TL;DR: In this article, a processor architecture for elliptic curves cryptosystems over fields GF(2 m ) is proposed, which is a scalable architecture in terms of area and speed that exploits the abilities of reconfigurable hardware to deliver optimized circuitry for different elliptic curve and finite fields.
Abstract: This work proposes a processor architecture for elliptic curves cryptosystems over fields GF(2 m ) This is a scalable architecture in terms of area and speed that exploits the abilities of reconfigurable hardware to deliver optimized circuitry for different elliptic curves and finite fields The main features of this architecture are the use of an optimized bit-parallel squarer, a digit-serial multiplier, and two programmable processors Through reconfiguration, the squarer and the multiplier architectures can be optimized for any field order or field polynomial The multiplier performance can also be scaled according to system's needs Our results show that implementations of this architecture executing the projective coordinates version of the Montgomery scalar multiplication algorithm can compute elliptic curve scalar multiplications with arbitrary points in 021 msec in the field GF(2 167 ) A result that is at least 19 times faster than documented hardware implementations and at least 37 times faster than documented software implementations

205 citations

Journal ArticleDOI
TL;DR: It is concluded that the proposed DeepNerve not only generates satisfactory results for localization and segmentation of the median nerve, but also creates more promising measurements for applications in clinical carpal tunnel syndrome diagnosis.
Abstract: Carpal tunnel syndrome commonly occurs in individuals working in occupations that involve use of vibrating manual tools or tasks with highly repetitive and forceful manual exertion. In recent years, carpal tunnel syndrome has been evaluated by ultrasound imaging that monitors median nerve movement. Conventional image analysis methods, such as the active contour model, are typically used to expedite automatic segmentation of the median nerve, but these usually suffer from an arduous manual intervention. We propose a new convolutional neural network framework for localization and segmentation of the median nerve, called DeepNerve, that is based on the U-Net model. DeepNerve integrates the characteristics of MaskTrack and convolutional long short-term memory to effectively locate and segment the median nerve. On the basis of experimental results, the proposed model achieved high performance and generated average Dice measurement, precision, recall and F-score values of 0.8975, 0.8912, 0.9119 and 0.9015, respectively. The segmentation results of DeepNerve were significantly improved in comparison with those of conventional active contour models. Additionally, the results of Student's t-test revealed significant differences in four deformation measurements of the median nerve, including area, perimeter, aspect ratio and circularity. We conclude that the proposed DeepNerve not only generates satisfactory results for localization and segmentation of the median nerve, but also creates more promising measurements for applications in clinical carpal tunnel syndrome diagnosis.

29 citations

Journal ArticleDOI
TL;DR: In this paper, the authors evaluated the performance of an assistive artificial intelligence (AI) system in aiding the identification of anatomical structures on ultrasound and found that the system was helpful in identifying specific anatomical structures in 1330/1334 cases and for confirming the correct ultrasound view in 273/275 scans (99.3%).
Abstract: Ultrasound-guided regional anesthesia involves visualizing sono-anatomy to guide needle insertion and the perineural injection of local anesthetic. Anatomical knowledge and recognition of anatomical structures on ultrasound are known to be imperfect amongst anesthesiologists. This investigation evaluates the performance of an assistive artificial intelligence (AI) system in aiding the identification of anatomical structures on ultrasound. Three independent experts in regional anesthesia reviewed 40 ultrasound scans of seven body regions. Unmodified ultrasound videos were presented side-by-side with AI-highlighted ultrasound videos. Experts rated the overall system performance, ascertained whether highlighting helped identify specific anatomical structures, and provided opinion on whether it would help confirm the correct ultrasound view to a less experienced practitioner. Two hundred and seventy-five assessments were performed (five videos contained inadequate views); mean highlighting scores ranged from 7.87 to 8.69 (out of 10). The Kruskal-Wallis H-test showed a statistically significant difference in the overall performance rating (χ2 [6] = 36.719, asymptotic p < 0.001); regions containing a prominent vascular landmark ranked most highly. AI-highlighting was helpful in identifying specific anatomical structures in 1330/1334 cases (99.7%) and for confirming the correct ultrasound view in 273/275 scans (99.3%). These data demonstrate the clinical utility of an assistive AI system in aiding the identification of anatomical structures on ultrasound during ultrasound-guided regional anesthesia. Whilst further evaluation must follow, such technology may present an opportunity to enhance clinical practice and energize the important field of clinical anatomy amongst clinicians.

17 citations

Journal ArticleDOI
TL;DR: Computer analysis of the image echogenicity of the median nerve presented confidence levels comparable to trusted evaluation techniques and is a promising tool for assessing the nerve’s status in CTS as approach of the CTS assessment free from subjectivity of examiner.

15 citations

Journal ArticleDOI
01 Jan 2020
TL;DR: The literature for applications of TPM in the cloud‐computing environment is surveyed, and special attention is paid to the assessment of run time phases and software layers it is applied to.

13 citations