36 research outputs found

    Robot Assisted Object Manipulation for Minimally Invasive Surgery

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    Robotic systems have an increasingly important role in facilitating minimally invasive surgical treatments. In robot-assisted minimally invasive surgery, surgeons remotely control instruments from a console to perform operations inside the patient. However, despite the advanced technological status of surgical robots, fully autonomous systems, with decision-making capabilities, are not yet available. In 2017, a structure to classify the research efforts toward autonomy achievable with surgical robots was proposed by Yang et al. Six different levels were identified: no autonomy, robot assistance, task autonomy, conditional autonomy, high autonomy, and full autonomy. All the commercially available platforms in robot-assisted surgery is still in level 0 (no autonomy). Despite increasing the level of autonomy remains an open challenge, its adoption could potentially introduce multiple benefits, such as decreasing surgeons’ workload and fatigue and pursuing a consistent quality of procedures. Ultimately, allowing the surgeons to interpret the ample and intelligent information from the system will enhance the surgical outcome and positively reflect both on patients and society. Three main aspects are required to introduce automation into surgery: the surgical robot must move with high precision, have motion planning capabilities and understand the surgical scene. Besides these main factors, depending on the type of surgery, there could be other aspects that might play a fundamental role, to name some compliance, stiffness, etc. This thesis addresses three technological challenges encountered when trying to achieve the aforementioned goals, in the specific case of robot-object interaction. First, how to overcome the inaccuracy of cable-driven systems when executing fine and precise movements. Second, planning different tasks in dynamically changing environments. Lastly, how the understanding of a surgical scene can be used to solve more than one manipulation task. To address the first challenge, a control scheme relying on accurate calibration is implemented to execute the pick-up of a surgical needle. Regarding the planning of surgical tasks, two approaches are explored: one is learning from demonstration to pick and place a surgical object, and the second is using a gradient-based approach to trigger a smoother object repositioning phase during intraoperative procedures. Finally, to improve scene understanding, this thesis focuses on developing a simulation environment where multiple tasks can be learned based on the surgical scene and then transferred to the real robot. Experiments proved that automation of the pick and place task of different surgical objects is possible. The robot was successfully able to autonomously pick up a suturing needle, position a surgical device for intraoperative ultrasound scanning and manipulate soft tissue for intraoperative organ retraction. Despite automation of surgical subtasks has been demonstrated in this work, several challenges remain open, such as the capabilities of the generated algorithm to generalise over different environment conditions and different patients

    Towards Quantitative Endoscopy with Vision Intelligence

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    In this thesis, we work on topics related to quantitative endoscopy with vision-based intelligence. Specifically, our works revolve around the topic of video reconstruction in endoscopy, where many challenges exist, such as texture scarceness, illumination variation, multimodality, etc., and these prevent prior works from working effectively and robustly. To this end, we propose to combine the strength of expressivity of deep learning approaches and the rigorousness and accuracy of non-linear optimization algorithms to develop a series of methods to confront such challenges towards quantitative endoscopy. We first propose a retrospective sparse reconstruction method that can estimate a high-accuracy and density point cloud and high-completeness camera trajectory from a monocular endoscopic video with state-of-the-art performance. To enable this, replacing the role of a hand-crafted local descriptor, a deep image feature descriptor is developed to boost the feature matching performance in a typical sparse reconstruction algorithm. A retrospective surface reconstruction pipeline is then proposed to estimate a textured surface model from a monocular endoscopic video, where self-supervised depth and descriptor learning and surface fusion technique is involved. We show that the proposed method performs superior to a popular dense reconstruction method and the estimate reconstructions are in good agreement with the surface models obtained from CT scans. To align video-reconstructed surface models with pre-operative imaging such as CT, we introduce a global point cloud registration algorithm that is robust to resolution mismatch that often happens in such multi-modal scenarios. Specifically, a geometric feature descriptor is developed where a novel network normalization technique is used to help a 3D network produce more consistent and distinctive geometric features for samples with different resolutions. The proposed geometric descriptor achieves state-of-the-art performance, based on our evaluation. Last but not least, a real-time SLAM system that estimates a surface geometry and camera trajectory from a monocular endoscopic video is developed, where deep representations for geometry and appearance and non-linear factor graph optimization are used. We show that the proposed SLAM system performs favorably compared with a state-of-the-art feature-based SLAM system

    VLSI Design

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    This book provides some recent advances in design nanometer VLSI chips. The selected topics try to present some open problems and challenges with important topics ranging from design tools, new post-silicon devices, GPU-based parallel computing, emerging 3D integration, and antenna design. The book consists of two parts, with chapters such as: VLSI design for multi-sensor smart systems on a chip, Three-dimensional integrated circuits design for thousand-core processors, Parallel symbolic analysis of large analog circuits on GPU platforms, Algorithms for CAD tools VLSI design, A multilevel memetic algorithm for large SAT-encoded problems, etc

    RSS Based Localization for Partial Discharge Source Using Received Signal Strength Only

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    Partial discharge (PD) localization has been performed on a periodic or on a request basis to assess the health of high-voltage (HV) systems mainly due to lack of feasibility of techniques for continuous monitoring and localization. Advancements in the field of communication technology have made it possible to detect and locate PD activity in HV systems on a continuous basis. Existing PD localization techniques mainly include the time of arrival (TOA), time difference of arrival (TDOA) and angle of arrival (AOA) methods. These techniques require time-based synchronization of sensor nodes that are involved in the receiver system resulting in expensive and complex hardware and software solutions. In this thesis, a received signal strength (RSS) based localization of PD is proposed. It is demonstrated that RSS based localization can be used under anonymous and harsh industrial environments for PD localization. RSS based localization does not require synchronization because unlike TOA, TDOA and AOA, it processes the amplitude of the received signal and not its phase. A theoretical model of the algorithm has been developed based on the path loss model equation. Simulations have been performed to prove the principle in noiseless and noisy conditions before the experimental study was conducted. Artificial noise has been generated to test the performance of the algorithm in different noise conditions. To explore the algorithm in real substation environments, an empirical study was performed in indoor and outdoor environments. Artificial PD signal is generated by using a high voltage partial discharge (HVPD) Pico Coulomb (pc) calibrator to perform the field trials at two different sites i.e., power network distribution centre (PNDC) at the University of Strathclyde and TATA Steel at Port Talbot, Wales. A specialised radiometer sensor is used to measure PD signals. Received signals from voltage levels are converted into power signals (dBm) as input to the location algorithm. Various sensors configurations in indoor and outdoor environments were used. The algorithm’s performance was evaluated based on four parameters which include, the estimated location, localization error, the path loss exponent (PLE) optimisation and the scalability. Simulation and experimental studies show that there is sufficient agreement and RSS based localization is a promising technique that can be used autonomously in future condition monitoring of HV systems on a continuous basis

    Recent Developments in Smart Healthcare

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    Medicine is undergoing a sector-wide transformation thanks to the advances in computing and networking technologies. Healthcare is changing from reactive and hospital-centered to preventive and personalized, from disease focused to well-being centered. In essence, the healthcare systems, as well as fundamental medicine research, are becoming smarter. We anticipate significant improvements in areas ranging from molecular genomics and proteomics to decision support for healthcare professionals through big data analytics, to support behavior changes through technology-enabled self-management, and social and motivational support. Furthermore, with smart technologies, healthcare delivery could also be made more efficient, higher quality, and lower cost. In this special issue, we received a total 45 submissions and accepted 19 outstanding papers that roughly span across several interesting topics on smart healthcare, including public health, health information technology (Health IT), and smart medicine

    Segmentation of pelvic structures from preoperative images for surgical planning and guidance

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    Prostate cancer is one of the most frequently diagnosed malignancies globally and the second leading cause of cancer-related mortality in males in the developed world. In recent decades, many techniques have been proposed for prostate cancer diagnosis and treatment. With the development of imaging technologies such as CT and MRI, image-guided procedures have become increasingly important as a means to improve clinical outcomes. Analysis of the preoperative images and construction of 3D models prior to treatment would help doctors to better localize and visualize the structures of interest, plan the procedure, diagnose disease and guide the surgery or therapy. This requires efficient and robust medical image analysis and segmentation technologies to be developed. The thesis mainly focuses on the development of segmentation techniques in pelvic MRI for image-guided robotic-assisted laparoscopic radical prostatectomy and external-beam radiation therapy. A fully automated multi-atlas framework is proposed for bony pelvis segmentation in MRI, using the guidance of MRI AE-SDM. With the guidance of the AE-SDM, a multi-atlas segmentation algorithm is used to delineate the bony pelvis in a new \ac{MRI} where there is no CT available. The proposed technique outperforms state-of-the-art algorithms for MRI bony pelvis segmentation. With the SDM of pelvis and its segmented surface, an accurate 3D pelvimetry system is designed and implemented to measure a comprehensive set of pelvic geometric parameters for the examination of the relationship between these parameters and the difficulty of robotic-assisted laparoscopic radical prostatectomy. This system can be used in both manual and automated manner with a user-friendly interface. A fully automated and robust multi-atlas based segmentation has also been developed to delineate the prostate in diagnostic MR scans, which have large variation in both intensity and shape of prostate. Two image analysis techniques are proposed, including patch-based label fusion with local appearance-specific atlases and multi-atlas propagation via a manifold graph on a database of both labeled and unlabeled images when limited labeled atlases are available. The proposed techniques can achieve more robust and accurate segmentation results than other multi-atlas based methods. The seminal vesicles are also an interesting structure for therapy planning, particularly for external-beam radiation therapy. As existing methods fail for the very onerous task of segmenting the seminal vesicles, a multi-atlas learning framework via random decision forests with graph cuts refinement has further been proposed to solve this difficult problem. Motivated by the performance of this technique, I further extend the multi-atlas learning to segment the prostate fully automatically using multispectral (T1 and T2-weighted) MR images via hybrid \ac{RF} classifiers and a multi-image graph cuts technique. The proposed method compares favorably to the previously proposed multi-atlas based prostate segmentation. The work in this thesis covers different techniques for pelvic image segmentation in MRI. These techniques have been continually developed and refined, and their application to different specific problems shows ever more promising results.Open Acces

    Efficient Decision Support Systems

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    This series is directed to diverse managerial professionals who are leading the transformation of individual domains by using expert information and domain knowledge to drive decision support systems (DSSs). The series offers a broad range of subjects addressed in specific areas such as health care, business management, banking, agriculture, environmental improvement, natural resource and spatial management, aviation administration, and hybrid applications of information technology aimed to interdisciplinary issues. This book series is composed of three volumes: Volume 1 consists of general concepts and methodology of DSSs; Volume 2 consists of applications of DSSs in the biomedical domain; Volume 3 consists of hybrid applications of DSSs in multidisciplinary domains. The book is shaped decision support strategies in the new infrastructure that assists the readers in full use of the creative technology to manipulate input data and to transform information into useful decisions for decision makers
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