WhittleSearch: Interactive Image Search with Relative Attribute Feedback
Adriana Kovashka, Devi Parikh, Kristen Grauman

TL;DR
WhittleSearch introduces an interactive image search method using relative attribute feedback, enabling users to refine results efficiently through comparative property statements, outperforming traditional relevance feedback in speed and accuracy.
Contribution
This paper presents a novel interactive image search approach leveraging relative attribute feedback, with active and user-initiated variants, improving search efficiency and accuracy.
Findings
Outperforms traditional relevance feedback in speed and accuracy
Active feedback reduces user interaction needed
Ordinal attributes improve computational efficiency
Abstract
We propose a novel mode of feedback for image search, where a user describes which properties of exemplar images should be adjusted in order to more closely match his/her mental model of the image sought. For example, perusing image results for a query "black shoes", the user might state, "Show me shoe images like these, but sportier." Offline, our approach first learns a set of ranking functions, each of which predicts the relative strength of a nameable attribute in an image (e.g., sportiness). At query time, the system presents the user with a set of exemplar images, and the user relates them to his/her target image with comparative statements. Using a series of such constraints in the multi-dimensional attribute space, our method iteratively updates its relevance function and re-ranks the database of images. To determine which exemplar images receive feedback from the user, we…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
