Paper
1 July 1992 Tactile pattern recognition with complex linear morphology
Mohammad Rahmati, Laurence G. Hassebrook, Hsienchung Chi, Gongliang Guo, William A. Gruver
Author Affiliations +
Abstract
Tactile information processing has received a relatively small amount of attention in the area of pattern recognition. However, while most of the attention has been given to image, acoustic, and electromagnetic signal processing, there are many applications where tactile information processing is applicable. For example, underwater salvage operations where the water may be opaque with debris and target objects may be covered with viscous substances like silt, sand, mud, or camouflaged by crustaceans. These environments may also be hazardous to humans, because of pressure, temperature, or contamination. Another example is industrial assembly where subcomponents, initially in random position and orientation, need to be assembled together. We assume that an object has been tactilly sampled into a polyhedron mesh. Our concentration in this writing is to identify this mesh as belonging to a target object independent of orientation and position. To solve this problem we present a fundamental approach we call Complex Linear Morphology (CLM). This technique involves non-linear architectures which rely on banks of linear correlation filter elements thus the term linear. These elements are comprised of complex weighted training images or solids, thus the term complex. These complex weights are used to approximate logical operations on the input images or solids which result in the discrimination of target objects from clutter objects, thus the term morphology. There are two architectures presented. The first architecture assumes the 3-D polyhedron mesh is converted to a 2-D image by projection. CLM is applied to these 2-D images which are rotation-variant. The second architecture uses CLM techniques to process 3-D information directly. Results are presented for the 2-D CLM approach and techniques are presented for the 3-D CLM approach.
© (1992) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Mohammad Rahmati, Laurence G. Hassebrook, Hsienchung Chi, Gongliang Guo, and William A. Gruver "Tactile pattern recognition with complex linear morphology", Proc. SPIE 1702, Hybrid Image and Signal Processing III, (1 July 1992); https://doi.org/10.1117/12.60547
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CITATIONS
Cited by 3 scholarly publications.
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KEYWORDS
Filtering (signal processing)

Image filtering

Linear filtering

3D image processing

3D acquisition

Nonlinear filtering

Data processing

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