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Robust Hand Gesture Recognition for Robotic Hand Control

Robust Hand Gesture Recognition for Robotic Hand Control
Author: Ankit Chaudhary
Publisher: Springer
Total Pages: 108
Release: 2017-06-05
Genre: Technology & Engineering
ISBN: 9811047987

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This book focuses on light invariant bare hand gesture recognition while there is no restriction on the types of gestures. Observations and results have confirmed that this research work can be used to remotely control a robotic hand using hand gestures. The system developed here is also able to recognize hand gestures in different lighting conditions. The pre-processing is performed by developing an image-cropping algorithm that ensures only the area of interest is included in the segmented image. The segmented image is compared with a predefined gesture set which must be installed in the recognition system. These images are stored and feature vectors are extracted from them. These feature vectors are subsequently presented using an orientation histogram, which provides a view of the edges in the form of frequency. Thereby, if the same gesture is shown twice in different lighting intensities, both repetitions will map to the same gesture in the stored data. The mapping of the segmented image's orientation histogram is firstly done using the Euclidian distance method. Secondly, the supervised neural network is trained for the same, producing better recognition results. An approach to controlling electro-mechanical robotic hands using dynamic hand gestures is also presented using a robot simulator. Such robotic hands have applications in commercial, military or emergency operations where human life cannot be risked. For such applications, an artificial robotic hand is required to perform real-time operations. This robotic hand should be able to move its fingers in the same manner as a human hand. For this purpose, hand geometry parameters are obtained using a webcam and also using KINECT. The parameter detection is direction invariant in both methods. Once the hand parameters are obtained, the fingers’ angle information is obtained by performing a geometrical analysis. An artificial neural network is also implemented to calculate the angles. These two methods can be used with only one hand, either right or left. A separate method that is applicable to both hands simultaneously is also developed and fingers angles are calculated. The contents of this book will be useful for researchers and professional engineers working on robotic arm/hand systems.


Novel Cost Measures for Robust Recognition of Dynamic Hand Gestures

Novel Cost Measures for Robust Recognition of Dynamic Hand Gestures
Author: Ameya Kulkarni
Publisher:
Total Pages:
Release: 2011
Genre:
ISBN:

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Computer vision aided automatic hand gesture recognition system plays a vital role in real world human computer interaction applications such as sign language recognition, game controls, virtual reality, intelligent home appliances and assistive robotics. In such systems, when input with a video sequence, the challenging task is to locate the gesturing hand (spatial segmentation) and determine when the gesture starts and ends (temporal segmentation). In this thesis, we use a framework which at its principal has a dynamic space time warping (DSTW) algorithm to simultaneously localize gesturing hand, to find an optimal alignment in time domain between query-model sequences and to compute a matching cost (a measure of how well the query sequence matches with the model sequence) for the query-model pair. Within the context of DSTW, the thesis proposes few novel cost measures to improve the performance of the framework for robust recognition of hand gesture with the help of translation and scale invariant feature vectors extracted at each frame of the input video. The performance of the system is evaluated in a real world scene with cluttered background and in presence of multiple moving skin colored distractors in the background.


Challenges and Applications for Hand Gesture Recognition

Challenges and Applications for Hand Gesture Recognition
Author: Kane, Lalit
Publisher: IGI Global
Total Pages: 249
Release: 2022-03-25
Genre: Computers
ISBN: 1799894363

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Due to the rise of new applications in electronic appliances and pervasive devices, automated hand gesture recognition (HGR) has become an area of increasing interest. HGR developments have come a long way from the traditional sign language recognition (SLR) systems to depth and wearable sensor-based electronic devices. Where the former are more laboratory-oriented frameworks, the latter are comparatively realistic and practical systems. Based on various gestural traits, such as hand postures, gesture recognition takes different forms. Consequently, different interpretations can be associated with gestures in various application contexts. A considerable amount of research is still needed to introduce more practical gesture recognition systems and associated algorithms. Challenges and Applications for Hand Gesture Recognition highlights the state-of-the-art practices of HGR research and discusses key areas such as challenges, opportunities, and future directions. Covering a range of topics such as wearable sensors and hand kinematics, this critical reference source is ideal for researchers, academicians, scholars, industry professionals, engineers, instructors, and students.


The Human Hand as an Inspiration for Robot Hand Development

The Human Hand as an Inspiration for Robot Hand Development
Author: Ravi Balasubramanian
Publisher: Springer
Total Pages: 573
Release: 2014-01-03
Genre: Technology & Engineering
ISBN: 3319030175

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“The Human Hand as an Inspiration for Robot Hand Development” presents an edited collection of authoritative contributions in the area of robot hands. The results described in the volume are expected to lead to more robust, dependable, and inexpensive distributed systems such as those endowed with complex and advanced sensing, actuation, computation, and communication capabilities. The twenty-four chapters discuss the field of robotic grasping and manipulation viewed in light of the human hand’s capabilities and push the state-of-the-art in robot hand design and control. Topics discussed include human hand biomechanics, neural control, sensory feedback and perception, and robotic grasp and manipulation. This book will be useful for researchers from diverse areas such as robotics, biomechanics, neuroscience, and anthropologists.


Dual-sensor Approaches for Real-time Robust Hand Gesture Recognition

Dual-sensor Approaches for Real-time Robust Hand Gesture Recognition
Author: Kui Liu
Publisher:
Total Pages: 198
Release: 2015
Genre: Gesture
ISBN:

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The use of hand gesture recognition has been steadily growing in various human-computer interaction applications. Under realistic operating conditions, it has been shown that hand gesture recognition systems exhibit recognition rate limitations when using a single sensor. Two dual-sensor approaches have thus been developed in this dissertation in order to improve the performance of hand gesture recognition under realistic operating conditions. The first approach involves the use of image pairs from a stereo camera setup by merging the image information from the left and right camera, while the second approach involves the use of a Kinect depth camera and an inertial sensor by fusing differing modality data within the framework of a hidden Markov model. The emphasis of this dissertation has been on system building and practical deployment. More specifically, the major contributions of the dissertation are: (a) improvement of hand gestures recognition rates when using a pair of images from a stereo camera compared to when using a single image by fusing the information from the left and right images in a complementary manner, and (b) improvement of hand gestures recognition rates when using a dual-modality sensor setup consisting of a Kinect depth camera and an inertial body sensor compared to the situations when each sensor is used individually on its own. Experimental results obtained indicate that the developed approaches generate higher recognition rates in different backgrounds and lighting conditions compared to the situations when an individual sensor is used. Both approaches are designed such that the entire recognition system runs in real-time on PC platform.


Novel Methods for Robust Real-time Hand Gesture Interfaces

Novel Methods for Robust Real-time Hand Gesture Interfaces
Author: Nathaniel Sean Rossol
Publisher:
Total Pages: 110
Release: 2015
Genre: Computer vision
ISBN:

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Real-time control of visual display systems via mid-air hand gestures offers many advantages over traditional interaction modalities. In medicine, for example, it allows a practitioner to adjust display values, e.g. contrast or zoom, on a medical visualization interface without the need to re-sterilize the interface. However, there are many practical challenges that make such interfaces non-robust including poor tracking due to frequent occlusion of fingers, interference from hand-held objects, and complex interfaces that are difficult for users to learn to use efficiently. In this work, various techniques are explored for improving the robustness of computer interfaces that use hand gestures. This work is focused predominately on real-time markerless Computer Vision (CV) based tracking methods with an emphasis on systems with high sampling rates. First, we explore a novel approach to increase hand pose estimation accuracy from multiple sensors at high sampling rates in real-time. This approach is achieved through an intelligent analysis of pose estimations from multiple sensors in a way that is highly scalable because raw image data is not transmitted between devices. Experimental results demonstrate that our proposed technique significantly improves the pose estimation accuracy while still maintaining the ability to capture individual hand poses at over 120 frames per second. Next, we explore techniques for improving pose estimation for the purposes of gesture recognition in situations where only a single sensor is used at high sampling rates without image data. In this situation, we demonstrate an approach where a combination of kinematic constraints and computed heuristics are used to estimate occluded keypoints to produce a partial pose estimation of a user's hand which is then used with our gestures recognition system to control a display. The results of our user study demonstrate that the proposed algorithm significantly improves the gesture recognition rate of the setup. We then explore gesture interface designs for situations where the user may (or may not) have a large portion of their hand occluded by a hand-held tool while gesturing. We address this challenge by developing a novel interface that uses a single set of gestures designed to be equally effective for fingers and hand-held tools without the need for any markers. The effectiveness of our approach is validated through a user study on a group of people given the task of adjusting parameters on a medical image display. Finally, we examine improving the efficiency of training for our interfaces by automatically assessing key user performance metrics (such as dexterity and confidence), and adapting the interface accordingly to reduce user frustration. We achieve this through a framework that uses Bayesian networks to estimate values for abstract hidden variables in our user model, based on analysis of data recorded from the user during operation of our system.


Inventive Computation and Information Technologies

Inventive Computation and Information Technologies
Author: S. Smys
Publisher: Springer Nature
Total Pages: 983
Release: 2021-03-27
Genre: Technology & Engineering
ISBN: 9813343052

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This book is a collection of best selected papers presented at the International Conference on Inventive Computation and Information Technologies (ICICIT 2020), organized during 24–25 September 2020. The book includes papers in the research area of information sciences and communication engineering. The book presents novel and innovative research results in theory, methodology and applications of communication engineering and information technologies.


Robust Real-time Hands-and-face Detection for Human Robot Interaction

Robust Real-time Hands-and-face Detection for Human Robot Interaction
Author: SeyedMehdi MohaimenianPour
Publisher:
Total Pages: 91
Release: 2018
Genre:
ISBN:

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With recent advances, robots have become more affordable and intelligent, which expands their application domain and number of consumers. Having robots around us in our daily lives creates a demand for an interaction system for communicating humans' intentions and commands to robots. We are interested in interactions that are easy, intuitive, and do not require the human to use any additional equipment. We present a robust real-time system for visual detection of hands and faces in RGB and gray-scale images based on a Deep Convolutional Neural Network. This system is designed to meet the requirements of a hands-free interface to UAVs described below that could be used for communicating to other robots equipped with a monocular camera using only hands and face gestures without any extra instruments. This work is accompanied by a novel hands-and-faces detection dataset gathered and labelled from a wide variety of sources including our own Human-UAV interaction videos, and several third-party datasets. By training our model on all these data, we obtain qualitatively good detection results in terms of both accuracy and speed on a commodity GPU. The same detector gives state-of-the-art accuracy and speed in a hand-detection benchmark and competitive results in a face detection benchmark. To demonstrate its effectiveness for Human-Robot Interaction we describe its use as the input to a novel, simple but practical gestural Human-UAV interface for static gesture detection based on hand position relative to the face. A small vocabulary of hand gestures is used to demonstrate our end-to-end pipeline for un-instrumented human-UAV interaction useful for entertainment or industrial applications. All software, training and test data produced for this thesis is released as an Open Source contribution.