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Papers/Edge Augmentation for Large-Scale Sketch Recognition witho...

Edge Augmentation for Large-Scale Sketch Recognition without Sketches

Nikos Efthymiadis, Giorgos Tolias, Ondrej Chum

2022-02-26Image to sketch recognitionEdge DetectionSketch Recognition
PaperPDFCode(official)

Abstract

This work addresses scaling up the sketch classification task into a large number of categories. Collecting sketches for training is a slow and tedious process that has so far precluded any attempts to large-scale sketch recognition. We overcome the lack of training sketch data by exploiting labeled collections of natural images that are easier to obtain. To bridge the domain gap we present a novel augmentation technique that is tailored to the task of learning sketch recognition from a training set of natural images. Randomization is introduced in the parameters of edge detection and edge selection. Natural images are translated to a pseudo-novel domain called "randomized Binary Thin Edges" (rBTE), which is used as a training domain instead of natural images. The ability to scale up is demonstrated by training CNN-based sketch recognition of more than 2.5 times larger number of categories than used previously. For this purpose, a dataset of natural images from 874 categories is constructed by combining a number of popular computer vision datasets. The categories are selected to be suitable for sketch recognition. To estimate the performance, a subset of 393 categories with sketches is also collected.

Results

TaskDatasetMetricValueModel
SketchIm4SketchAccuracy11.3rBTE (ResNet101)
SketchIm4SketchAccuracy5.3ResNet101
SketchPACSAccuracy70.6rBTE (ResNet18)
SketchSketchyAccuracy57.2rBTE (ResNet101)
SketchSketchyAccuracy11.4ResNet101
Sketch RecognitionIm4SketchAccuracy11.3rBTE (ResNet101)
Sketch RecognitionIm4SketchAccuracy5.3ResNet101
Sketch RecognitionPACSAccuracy70.6rBTE (ResNet18)
Sketch RecognitionSketchyAccuracy57.2rBTE (ResNet101)
Sketch RecognitionSketchyAccuracy11.4ResNet101

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