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Neural Network Based Sensory Fusion for Landmark DetectionNASA is planning to send numerous unmanned planetary missions to explore the space. This requires autonomous robotic vehicles which can navigate in an unstructured, unknown, and uncertain environment. Landmark based navigation is a new area of research which differs from the traditional goal-oriented navigation, where a mobile robot starts from an initial point and reaches a destination in accordance with a pre-planned path. The landmark based navigation has the advantage of allowing the robot to find its way without communication with the mission control station and without exact knowledge of its coordinates. Current algorithms based on landmark navigation however pose several constraints. First, they require large memories to store the images. Second, the task of comparing the images using traditional methods is computationally intensive and consequently real-time implementation is difficult. The method proposed here consists of three stages, First stage utilizes a heuristic-based algorithm to identify significant objects. The second stage utilizes a neural network (NN) to efficiently classify images of the identified objects. The third stage combines distance information with the classification results of neural networks for efficient and intelligent navigation.
Document ID
20010000437
Acquisition Source
Headquarters
Document Type
Conference Paper
Authors
Kumbla, Kishan -K.
(New Mexico Univ. Albuquerque, NM United States)
Akbarzadeh, Mohammad R.
(New Mexico Univ. Albuquerque, NM United States)
Date Acquired
August 20, 2013
Publication Date
February 1, 1997
Publication Information
Publication: NASA University Research Centers Technical Advances in Education, Aeronautics, Space, Autonomy, Earth and Environment
Volume: 1
Subject Category
Cybernetics, Artificial Intelligence And Robotics
Report/Patent Number
URC97078
Funding Number(s)
CONTRACT_GRANT: NCCW-87
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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