Universal object recognition

user-5d8054e8530c708f9920ccce(2021)

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摘要
Large scale instance recognition is provided that can take advantage of channel-wise pooling. A received query image is processed to extract a set of features that can be used to generate a set of region proposals. The proposed regions of image data are processed using a trained classifier to classify the regions as object or non-object regions. Extracted features for the object regions are processed using feature correlation against extracted features for a set of object images, each representing a classified object. Matching tensors generated from the comparison are processed using a spatial verification network to determine match scores for the various object images with respect to a specific object region. The match scores are used to determine which objects, or types of objects, are represented in the query image. Information or content associated with the matching objects can be provided as part of a response.
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关键词
Cognitive neuroscience of visual object recognition,Classifier (linguistics),Pooling,Pattern recognition,Computer science,Artificial intelligence,Feature correlation
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