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Object Recognition: Performance evaluation using SIFT and SURF

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Figure

Figure 1. The features of the database image are extracted using SIFT
Figure 3. The features of the database image are extracted using SURF
Figure 6. The register in the input image is been matched with the register in the database image and it is been recognized using SURF
Figure 8. The yellow box is detected in the input image with different scaling and orientation and illumination too using SIFT
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