Kalomiros, JohnVourvoulakis, JohnLygouras, John2015-01-312024-09-272015-01-312024-09-272014http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=6958478&punumber%3D6948378%26sortType%3Dasc_p_Sequence%26filter%3DAND%28p_IS_Number%3A6958430%29%26pageNumber%3D2https://repository2024.ihu.gr/handle/123456789/73A new architecture for the real-time detection of scale-invariant features in image sequences is presented. The system is based on a low-cost smart-camera custom board, developed to target robotic vision applications. Several optimizations of the SIFT detection procedure are proposed in order to achieve robust keypoint detection with high repeatability and recall values. As a result, a high accuracy and resourceefficient implementation of the SIFT detector is presented. The system is pipelined and streams pixel data using a 45 MHz clock, allowing keypoint detection at 150 frames per second, in video sequences with resolution 640x480. Integrating a commodity CMOS sensor, the prototype system displays keypoints at video rate, using only a fraction of the resources of a low-cost FPGA device.6enHardware implementation of an optimized scale-invariant feature detector for robotic applicationsΆρθρο σε επιστημονικό συνέδριοSIFTComputer hardwareReal-time systemsMachine vision