6 results on '"Dilip K. Prasad"'
Search Results
2. Object Pose Estimation via Pruned Hough Forest With Combined Split Schemes for Robotic Grasp
- Author
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Huixu Dong, I-Ming Chen, and Dilip K. Prasad
- Subjects
business.industry ,Computer science ,GRASP ,Decision tree ,Overfitting ,Object (computer science) ,Computational resource ,Machine learning ,computer.software_genre ,Control and Systems Engineering ,Feature (computer vision) ,Robot ,Artificial intelligence ,Electrical and Electronic Engineering ,business ,computer ,Pose - Abstract
Robotic grasp in complex open-world scenarios requires an effective and generalizable perception. Estimating object’s pose is needed in a variety of practical grasping scenarios. Here we present a novel approach of pose estimation of textureless and textured objects. The algorithm utilizes a single RGB-D image to exploit depth invariant, oriented point pair feature as well as local contextual sensitivity in cluttered environments. To enhance the performance of the voting process and improve learning efficiency, we employ a global pruning algorithm that reduces the risk of overfitting and simplifies the structure of decision trees after compensating for the complementary information among multiple trees by optimizing a designed global objective function. Finally, we also refine the pose obtained from the above stage. The proposed approach of estimating 6-D (degree of freedom) poses of textured and textureless objects is evaluated on publicly available data sets against the recent works under various conditions. It illustrates that our framework is superior to these recent works. Further, we perform extensive qualitative experiments of robotic grasp to illustrate the proposed approach can be applied to practical scenarios. Note to Practitioners —This article is motivated by the problem of the pose estimation of textured and textureless objects in clutter environments. It is difficult for conventional works to address the issue of estimating textured or textureless objects’ poses in such scenarios. We considered that a novel system should be able to obtain the 6-D poses of objects. Therefore, we investigate the combined use of multiple split functions with different characteristics. Learning the model based on Hough forests always cost much computational resource; therefore, we construct a novel pruned Hough forest for solving this issue. Through the comparison and robotic grasp verifications, the behavior of our system can be used in practical applications. In future, we will deploy the proposed system in robotic assembling tasks.
- Published
- 2021
- Full Text
- View/download PDF
3. Corrections to 'Pixel-Wise Ship Identification From Maritime Images via a Semantic Segmentation Model'
- Author
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Xinqiang Chen, Xingyu Wu, Dilip K. Prasad, Bing Wu, Octavian Postolache, and Yongsheng Yang
- Subjects
Electrical and Electronic Engineering ,Instrumentation - Published
- 2022
- Full Text
- View/download PDF
4. SoCodeCNN: Program Source Code for Visual CNN Classification Using Computer Vision Methodology
- Author
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Amit Kumar Singh, Klaus D. McDonald-Maier, Dilip K. Prasad, and Somdip Dey
- Subjects
Source code ,General Computer Science ,Computer science ,media_common.quotation_subject ,Feature extraction ,MPSoC ,Convolutional neural network ,Task (project management) ,resource management ,General Materials Science ,intermediate representation ,media_common ,business.industry ,VDP::Technology: 500 ,General Engineering ,Pattern recognition ,Classification ,Visualization ,VDP::Teknologi: 500 ,LLVM ,program ,lcsh:Electrical engineering. Electronics. Nuclear engineering ,Artificial intelligence ,State (computer science) ,business ,Resource management (computing) ,lcsh:TK1-9971 - Abstract
Automated feature extraction from program source-code such that proper computing resources could be allocated to the program is very difficult given the current state of technology. Therefore, conventional methods call for skilled human intervention in order to achieve the task of feature extraction from programs. This research is the first to propose a novel human-inspired approach to automatically convert program source-codes to visual images. The images could be then utilized for automated classification by visual convolutional neural network (CNN) based algorithm. Experimental results show high prediction accuracy in classifying the types of program in a completely automated manner using this approach.
- Published
- 2019
- Full Text
- View/download PDF
5. Video Processing From Electro-Optical Sensors for Object Detection and Tracking in a Maritime Environment: A Survey
- Author
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Dilip K. Prasad, Lily Rachmawati, Deepu Rajan, Eshan Rajabally, and Chai Quek
- Subjects
Background subtraction ,Radar tracker ,Computer science ,business.industry ,Mechanical Engineering ,Electro-optical sensor ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,020206 networking & telecommunications ,Video camera ,02 engineering and technology ,Video processing ,Sonar ,Object detection ,Computer Science Applications ,law.invention ,law ,Video tracking ,Automotive Engineering ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Computer vision ,Artificial intelligence ,business - Abstract
We present a survey on maritime object detection and tracking approaches, which are essential for the development of a navigational system for autonomous ships. The electro-optical (EO) sensor considered here is a video camera that operates in the visible or the infrared spectra, which conventionally complements radar and sonar for situational awareness at sea and has demonstrated its effectiveness over the last few years. This paper provides a comprehensive overview of various approaches of video processing for object detection and tracking in the maritime environment. We follow an approach-based taxonomy wherein the advantages and limitations of each approach are compared. The object detection system consists of the following modules: horizon detection, static background subtraction, and foreground segmentation. Each of these has been studied extensively in maritime situations and has been shown to be challenging due to the presence of background motion especially due to waves and wakes. The key processes involved in object tracking include video frame registration, dynamic background subtraction, and the object tracking algorithm itself. The challenges for robust tracking arise due to camera motion, dynamic background, and low contrast of tracked object, possibly due to environmental degradation. The survey also discusses multisensor approaches and commercial maritime systems that use EO sensors. The survey also highlights methods from computer vision research, which hold promise to perform well in maritime EO data processing. Performance of several maritime and computer vision techniques is evaluated on Singapore Maritime Dataset.
- Published
- 2017
- Full Text
- View/download PDF
6. Are object detection assessment criteria ready for maritime computer vision?
- Author
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Dilip K. Prasad, Chai Quek, Deepu Rajan, and Huixu Dong
- Subjects
FOS: Computer and information sciences ,Bottom edge ,Computer science ,Computer Vision and Pattern Recognition (cs.CV) ,media_common.quotation_subject ,Computer Science - Computer Vision and Pattern Recognition ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Field (computer science) ,GeneralLiterature_MISCELLANEOUS ,Domain (software engineering) ,0502 economics and business ,Computer vision ,Quality (business) ,media_common ,050210 logistics & transportation ,business.industry ,Mechanical Engineering ,05 social sciences ,VDP::Technology: 500 ,Object detection ,Computer Science Applications ,Sight ,VDP::Teknologi: 500 ,Automotive Engineering ,Artificial intelligence ,business - Abstract
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. Maritime vessels equipped with visible and infrared cameras can complement other conventional sensors for object detection. However, application of computer vision techniques in maritime domain received attention only recently. The maritime environment offers its own unique requirements and challenges. Assessment of the quality of detections is a fundamental need in computer vision. However, the conventional assessment metrics suitable for usual object detection are deficient in the maritime setting. Thus, a large body of related work in computer vision appears inapplicable to the maritime setting at the first sight. We discuss the problem of defining assessment metrics suitable for maritime computer vision. We consider new bottom edge proximity metrics as assessment metrics for maritime computer vision. These metrics indicate that existing computer vision approaches are indeed promising for maritime computer vision and can play a foundational role in the emerging field of maritime computer vision.
- Published
- 2019
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