Deep Networks Can Resemble Human Feed-forward Vision in Invariant Object Recognition - Sorbonne Université Access content directly
Journal Articles Scientific Reports Year : 2016

Deep Networks Can Resemble Human Feed-forward Vision in Invariant Object Recognition

Abstract

Deep convolutional neural networks (DCNNs) have attracted much attention recently, and have shown to be able to recognize thousands of object categories in natural image databases. Their architecture is somewhat similar to that of the human visual system: both use restricted receptive fields, and a hierarchy of layers which progressively extract more and more abstracted features. Yet it is unknown whether DCNNs match human performance at the task of view-invariant object recognition, whether they make similar errors and use similar representations for this task, and whether the answers depend on the magnitude of the viewpoint variations. To investigate these issues, we benchmarked eight state-of-the-art DCNNs, the HMAX model, and a baseline shallow model and compared their results to those of humans with backward masking. Unlike in all previous DCNN studies, we carefully controlled the magnitude of the viewpoint variations to demonstrate that shallow nets can outperform deep nets and humans when variations are weak. When facing larger variations, however, more layers were needed to match human performance and error distributions, and to have representations that are consistent with human behavior. A very deep net with 18 layers even outperformed humans at the highest variation level, using the most human-like representations.
Fichier principal
Vignette du fichier
srep32672.pdf (3.69 Mo) Télécharger le fichier
Origin : Publication funded by an institution
Loading...

Dates and versions

hal-01366713 , version 1 (15-09-2016)

Licence

Attribution

Identifiers

Cite

Saeed Reza Kheradpisheh, Masoud Ghodrati, Mohammad Ganjtabesh, Timothée Masquelier. Deep Networks Can Resemble Human Feed-forward Vision in Invariant Object Recognition. Scientific Reports, 2016, 6, pp.32672. ⟨10.1038/srep32672⟩. ⟨hal-01366713⟩
198 View
122 Download

Altmetric

Share

Gmail Facebook X LinkedIn More