Abstract:
Many machine vision applications, such as compression, pictorial database querying, and image understanding, often need to analyze in detail only a representative subset ...Show MoreMetadata
Abstract:
Many machine vision applications, such as compression, pictorial database querying, and image understanding, often need to analyze in detail only a representative subset of the image, which may be arranged into sequences of loci called regions-of-interest (ROIs). We have investigated and developed a methodology that serves to automatically identify such a subset of aROIs (algorithmically detected ROIs) using different image processing algorithms (IPAs), and appropriate clustering procedures. In human perception, an internal representation directs top-down, context-dependent sequences of eye movements to fixate on similar sequences of hROIs (human identified ROIs). In the paper, we introduce our methodology and we compare aROIs with hROIs as a criterion for evaluating and selecting bottom-up, context-free algorithms. An application is finally discussed.
Published in: IEEE Transactions on Pattern Analysis and Machine Intelligence ( Volume: 22, Issue: 9, September 2000)
DOI: 10.1109/34.877520