Title :
DeepSketch: Deep convolutional neural networks for sketch recognition and similarity search
Author :
Seddati, Omar ; Dupont, Stephane ; Mahmoudi, Said
Author_Institution :
Comput. Sci. - TCTS Lab., UMONS, Mons, Belgium
Abstract :
In this paper, we present a system for sketch classification and similarity search. We used deep convolution neural networks (ConvNets), state of the art in the field of image recognition. They enable both classification and medium/highlevel features extraction. We make use of ConvNets features as a basis for similarity search using k-Nearest Neighbors (kNN). Evaluation are performed on the TU-Berlin benchmark. Our main contributions are threefold: first, we use ConvNets in contrast to most previous approaches based essentially on hand crafted features. Secondly, we propose a ConvNet that is both more accurate and lighter/faster than the two only previous attempts at making use of ConvNets for handsketch recognition. We reached an accuracy of 75.42%. Third, we shown that similarly to their application on natural images, ConvNets allow the extraction of medium-level and high-level features (depending on the depth) which can be used for similarity search.1
Keywords :
convolution; image recognition; neural nets; query formulation; ConvNets; DeepSketch; TU-Berlin benchmark; deep convolution neural networks; image recognition; k-nearest neighbors; kNN; similarity search; sketch classification; sketch recognition; Benchmark testing; Computer architecture; Feature extraction; Image color analysis; Kernel; Neural networks; Training; ConvNets; DNN; Feature extraction; Freehand sketch; Sketch recognition;
Conference_Titel :
Content-Based Multimedia Indexing (CBMI), 2015 13th International Workshop on
Conference_Location :
Prague
DOI :
10.1109/CBMI.2015.7153606