Are there any 'object detectors' in the hidden layers of CNNs trained to identify objects or scenes?

Journal: Vision research
Published Date:

Abstract

Various methods of measuring unit selectivity have been developed with the aim of better understanding how neural networks work. But the different measures provide divergent estimates of selectivity, and this has led to different conclusions regarding the conditions in which selective object representations are learned and the functional relevance of these representations. In an attempt to better characterize object selectivity, we undertake a comparison of various selectivity measures on a large set of units in AlexNet, including localist selectivity, precision, class-conditional mean activity selectivity (CCMAS), the human interpretation of activation maximization (AM) images, and standard signal-detection measures. We find that the different measures provide different estimates of object selectivity, with precision and CCMAS measures providing misleadingly high estimates. Indeed, the most selective units had a poor hit-rate or a high false-alarm rate (or both) in object classification, making them poor object detectors. We fail to find any units that are even remotely as selective as the 'grandmother cell' units reported in recurrent neural networks. In order to generalize these results, we compared selectivity measures on units in VGG-16 and GoogLeNet trained on the ImageNet or Places-365 datasets that have been described as 'object detectors'. Again, we find poor hit-rates and high false-alarm rates for object classification. We conclude that signal-detection measures provide a better assessment of single-unit selectivity compared to common alternative approaches, and that deep convolutional networks of image classification do not learn object detectors in their hidden layers.

Authors

  • Ella M Gale
    Language and Memory Group, School of Experimental Psychology, University of Bristol, 12A Priory Road, Bristol, England, UK. ella.gale@bristol.ac.uk.
  • Nicholas Martin
    School of Psychological Science, University of Bristol, 12a Priory Road, Bristol BS8 1TU, UK. Electronic address: nm13850@bristol.ac.uk.
  • Ryan Blything
    School of Psychological Science, University of Bristol, 12a Priory Road, Bristol BS8 1TU, UK. Electronic address: ryan.blything@bristol.ac.uk.
  • Anh Nguyen
    Department of Computer Science and Software Engineering, Auburn University, AL, USA. Electronic address: anhnguyen@auburn.edu.
  • Jeffrey S Bowers
    University of Bristol, United Kingdom. Electronic address: j.bowers@bristol.ac.uk.