Knowledge-Based Automatic Feature Extraction

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3.3 Demonstration Plan Our demonstrations will consist of taking input images , and any available collateral data, and displaying the results of our APGD algorithms and to compare them, in some cases, with hand provided ground-truth results. We expect to demonstrate results on a variety of objects using a variety of imagery sources. The system will be designed to run autonomously but some human interaction, either to initiate the tasks, or to edit the results may be allowed. We will also aid in integrating our system with the system to be developed by the APGD IFD contractor and demonstrate our systems in a larger context. We intend to develop our software using the RCDE environment which should simplify integration with the IFD contractor.

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تاریخ انتشار 1997