| Publication Type | journal article |
| School or College | College of Engineering |
| Department | Kahlert School of Computing |
| Creator | Henderson, Thomas C. |
| Other Author | Fai, Wu So |
| Title | Pattern recognition in a multi-sensor environment |
| Date | 1983 |
| Description | Current pattern recognition systems tend to operate on a single sensor, e.g., a camera. however. the need is now evident for pattern recognition systems which can operate in multi-sensor environments. For example, a robotics workstation may use range finders. cameras, tactile pads, etc. The Multi-sensor Kernel System (MKS) provides an efficient and coherent approach to the specification, recovery, and analysis of patterns in the data sensed by such a diverse set of sensors. We demonstrate how much a system can be used to support both feature-based object models as well as structural models. The problems solved is the localization of a three-dimensional object in 3-space. Moreover, MKS allows rapid reconfiguration of the available sensors and the high-level models. |
| Type | Text |
| Publisher | University of Utah |
| First Page | 1 |
| Last Page | 36 |
| Subject | Pattern recognition; Multi-sensor; Multi-sensor Kernel System; MKS |
| Subject LCSH | Multisensor data fusion |
| Language | eng |
| Bibliographic Citation | Henderson, T. C., & Fai, W. S. (1983). Pattern recognition in a multi-sensor environment. 1-36. UUCS-83-001. |
| Series | University of Utah Computer Science Technical Report |
| Rights Management | ©University of Utah |
| Format Medium | application/pdf |
| Format Extent | 4,930,219 bytes |
| Identifier | ir-main,15996 |
| ARK | ark:/87278/s61z4p08 |
| Setname | ir_uspace |
| ID | 706648 |
| Reference URL | https://collections.lib.utah.edu/ark:/87278/s61z4p08 |