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;Background : Object recognition in problems entailing many classes is a challenging task. One example of such problems is the inventory list of warehouse. The inventory of typical warehouses often contain up to 10K different classes of objects. In this project we intend to develop inventory list maintanance method that is able to learn the number of classes of objects and train a classifier from the data. Towards this objective, we employ the background knowledge (e.g. from the Warehouse Management System - WMS) to constrain the complexity of the problem. ;Objectives : To develop an incremental clustering algorithm, that learns new classes of object through novelty detection. The background knowledge (e.g. WMS), which is an important source of information for constraining the problem, should be exploit towards a more robust system design. ;Research Questions : What is the optimal feature space and clustering technique for object identification in large-scale many classes? How to use background knowledge as clustering cues? How to employ novelty detection for learning new classes incrementally? ;Setup : dataset from a real-world warehouses.
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