Novelty detection in wildlife scenes through semantic context modelling

作者:

Highlights:

摘要

Novelty detection is an important functionality that has found many applications in information retrieval and processing. In this paper we propose a novel framework that deals with novelty detection in multiple-scene image sets. Working with wildlife image data, the framework starts with image segmentation, followed by feature extraction and classification of the image blocks extracted from image segments. The labelled image blocks are then scanned through to generate a co-occurrence matrix of object labels, representing the semantic context within the scene. The semantic co-occurrence matrices then undergo binarization and principal component analysis for dimension reduction, forming the basis for constructing one-class models on scene categories. An algorithm for outliers detection that employs multiple one-class models is proposed. An advantage of our approach is that it can be used for novelty detection and scene classification at the same time. Our experiments show that the proposed approach algorithm gives favourable performance for the task of detecting novel wildlife scenes, and binarization of the semantic co-occurrence matrices helps increase the robustness to variations of scene statistics.

论文关键词:Novelty detection,Co-occurrence matrices,Semantic context,Multiple one-class models

论文评审过程:Received 10 June 2011, Revised 16 January 2012, Accepted 27 February 2012, Available online 8 March 2012.

论文官网地址:https://doi.org/10.1016/j.patcog.2012.02.036