6 research outputs found
Content based image retrieval using unclean positive examples
Conventional content-based image retrieval (CBIR) schemes employing relevance feedback may suffer from some problems in the practical applications. First, most ordinary users would like to complete their search in a single interaction especially on the web. Second, it is time consuming and difficult to label a lot of negative examples with sufficient variety. Third, ordinary users may introduce some noisy examples into the query. This correspondence explores solutions to a new issue that image retrieval using unclean positive examples. In the proposed scheme, multiple feature distances are combined to obtain image similarity using classification technology. To handle the noisy positive examples, a new two-step strategy is proposed by incorporating the methods of data cleaning and noise tolerant classifier. The extensive experiments carried out on two different real image collections validate the effectiveness of the proposed scheme.<br /
Semantic Restructuring of Natural Language Image Captions to Enhance Image Retrieval
semantic, multimedia,information retrievalsemantic, multimedia,information retrievalsemantic, multimedia,information retrievalsemantic, multimedia,information retrieva
Semantic concept detection from visual content with statistical learning
Master'sMASTER OF SCIENC
Multi modal multi-semantic image retrieval
PhDThe rapid growth in the volume of visual information, e.g. image, and video can
overwhelm users’ ability to find and access the specific visual information of interest
to them. In recent years, ontology knowledge-based (KB) image information retrieval
techniques have been adopted into in order to attempt to extract knowledge from these
images, enhancing the retrieval performance. A KB framework is presented to
promote semi-automatic annotation and semantic image retrieval using multimodal
cues (visual features and text captions). In addition, a hierarchical structure for the KB
allows metadata to be shared that supports multi-semantics (polysemy) for concepts.
The framework builds up an effective knowledge base pertaining to a domain specific
image collection, e.g. sports, and is able to disambiguate and assign high level
semantics to ‘unannotated’ images.
Local feature analysis of visual content, namely using Scale Invariant Feature
Transform (SIFT) descriptors, have been deployed in the ‘Bag of Visual Words’
model (BVW) as an effective method to represent visual content information and to
enhance its classification and retrieval. Local features are more useful than global
features, e.g. colour, shape or texture, as they are invariant to image scale, orientation
and camera angle. An innovative approach is proposed for the representation,
annotation and retrieval of visual content using a hybrid technique based upon the use
of an unstructured visual word and upon a (structured) hierarchical ontology KB
model. The structural model facilitates the disambiguation of unstructured visual
words and a more effective classification of visual content, compared to a vector
space model, through exploiting local conceptual structures and their relationships.
The key contributions of this framework in using local features for image
representation include: first, a method to generate visual words using the semantic
local adaptive clustering (SLAC) algorithm which takes term weight and spatial
locations of keypoints into account. Consequently, the semantic information is
preserved. Second a technique is used to detect the domain specific ‘non-informative
visual words’ which are ineffective at representing the content of visual data and
degrade its categorisation ability. Third, a method to combine an ontology model with
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a visual word model to resolve synonym (visual heterogeneity) and polysemy
problems, is proposed. The experimental results show that this approach can discover
semantically meaningful visual content descriptions and recognise specific events,
e.g., sports events, depicted in images efficiently.
Since discovering the semantics of an image is an extremely challenging problem, one
promising approach to enhance visual content interpretation is to use any associated
textual information that accompanies an image, as a cue to predict the meaning of an
image, by transforming this textual information into a structured annotation for an
image e.g. using XML, RDF, OWL or MPEG-7. Although, text and image are distinct
types of information representation and modality, there are some strong, invariant,
implicit, connections between images and any accompanying text information.
Semantic analysis of image captions can be used by image retrieval systems to
retrieve selected images more precisely. To do this, a Natural Language Processing
(NLP) is exploited firstly in order to extract concepts from image captions. Next, an
ontology-based knowledge model is deployed in order to resolve natural language
ambiguities. To deal with the accompanying text information, two methods to extract
knowledge from textual information have been proposed. First, metadata can be
extracted automatically from text captions and restructured with respect to a semantic
model. Second, the use of LSI in relation to a domain-specific ontology-based
knowledge model enables the combined framework to tolerate ambiguities and
variations (incompleteness) of metadata. The use of the ontology-based knowledge
model allows the system to find indirectly relevant concepts in image captions and
thus leverage these to represent the semantics of images at a higher level.
Experimental results show that the proposed framework significantly enhances image
retrieval and leads to narrowing of the semantic gap between lower level machinederived
and higher level human-understandable conceptualisation
Enhancing person annotation for personal photo management using content and context based technologies
Rapid technological growth and the decreasing cost of photo capture means that we are all taking more digital photographs than ever before. However, lack of technology for automatically organising personal photo archives has resulted in many users left with poorly annotated photos, causing them great frustration when such photo collections are to be browsed or searched at a later time. As a result, there has recently been significant research interest in technologies for supporting effective annotation.
This thesis addresses an important sub-problem of the broad annotation problem, namely "person annotation" associated with personal digital photo management. Solutions to this problem are provided using content analysis tools in combination with context data within the experimental photo management framework, called “MediAssist”. Readily available image metadata, such as location and date/time, are captured from digital cameras with in-built GPS functionality, and thus provide knowledge about when and where the photos were taken. Such information is then used to identify the "real-world" events corresponding to certain activities in the photo capture process. The
problem of enabling effective person annotation is formulated in such a way that both "within-event" and "cross-event" relationships of persons' appearances are captured.
The research reported in the thesis is built upon a firm foundation of content-based analysis technologies, namely face detection, face recognition, and body-patch matching together with data fusion.
Two annotation models are investigated in this thesis, namely progressive and non-progressive. The effectiveness of each model is evaluated against varying proportions of
initial annotation, and the type of initial annotation based on individual and combined face, body-patch and person-context information sources. The results reported in the thesis strongly validate the use of multiple information sources for person annotation whilst
emphasising the advantage of event-based photo analysis in real-life photo management systems
Bridging semantic gap: learning and integrating semantics for content-based retrieval
Digital cameras have entered ordinary homes and produced^incredibly large number
of photos. As a typical example of broad image domain, unconstrained consumer
photos vary significantly. Unlike professional or domain-specific images, the objects
in the photos are ill-posed, occluded, and cluttered with poor lighting, focus, and
exposure. Content-based image retrieval research has yet to bridge the semantic gap
between computable low-level information and high-level user interpretation.
In this thesis, we address the issue of semantic gap with a structured learning
framework to allow modular extraction of visual semantics. Semantic image regions
(e.g. face, building, sky etc) are learned statistically, detected directly from image
without segmentation, reconciled across multiple scales, and aggregated spatially to
form compact semantic index. To circumvent the ambiguity and subjectivity in a
query, a new query method that allows spatial arrangement of visual semantics is
proposed. A query is represented as a disjunctive normal form of visual query terms
and processed using fuzzy set operators.
A drawback of supervised learning is the manual labeling of regions as training
samples. In this thesis, a new learning framework to discover local semantic patterns
and to generate their samples for training with minimal human intervention has been
developed. The discovered patterns can be visualized and used in semantic indexing.
In addition, three new class-based indexing schemes are explored. The winnertake-
all scheme supports class-based image retrieval. The class relative scheme and
the local classification scheme compute inter-class memberships and local class patterns
as indexes for similarity matching respectively. A Bayesian formulation is
proposed to unify local and global indexes in image comparison and ranking that
resulted in superior image retrieval performance over those of single indexes.
Query-by-example experiments on 2400 consumer photos with 16 semantic queries
show that the proposed approaches have significantly better (18% to 55%) average
precisions than a high-dimension feature fusion approach. The thesis has paved
two promising research directions, namely the semantics design approach and the
semantics discovery approach. They form elegant dual frameworks that exploits
pattern classifiers in learning and integrating local and global image semantics