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Lopez Cifuentes, AlejandroAuthorEscudero Viñolo, MarcosAuthorBescos Cano, JesusAuthor
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Proceedings Paper

Visualizing the Effect of Semantic Classes in the Attribution of Scene Recognition Models

Publicated to:Pattern Recognition. ICPR International Workshops and Challenges. ICPR 2021. 12663 LNCS 115-129 - 2021-01-01 12663 LNCS(), DOI: 10.1007/978-3-030-68796-0_9

Authors: López-Cifuentes A; Escudero-Viñolo M; Gajić A; Bescós J

Affiliations

Universidad Autónoma de Madrid - Author

Abstract

The performance of Convolutional Neural Networks for image classification has vastly and steadily increased during the last years. This success goes hand in hand with the need to explain and understand their decisions: opening the black box. The problem of attribution specifically deals with the characterization of the response of Convolutional Neural Networks by identifying the input features responsible for the model’s decision. Among all attribution methods, perturbation-based methods are an important family based on measuring the effect of perturbations applied to the input image in the model’s output. In this paper, we discuss the limitations of existing approaches and propose a novel perturbation-based attribution method guided by semantic segmentation. Our method inhibits specific image areas according to their assigned semantic label. Hereby, perturbations are link up with a semantic meaning and a complete attribution map is obtained for all image pixels. In addition, we propose a particularization of the proposed method to the scene recognition task which, differently than image classification, requires multi-focus attribution models. The proposed semantic-guided attribution method enables us to delve deeper into scene recognition interpretability by obtaining for each scene class the sets of relevant, irrelevant and distracting semantic labels. Experimental results suggest that the method can boost research by increasing the understanding of Convolutional Neural Networks while uncovering datasets biases which may have been inadvertently included during the harvest and annotation processes. All the code, data and supplementary results are available at http://www-vpu.eps.uam.es/publications/SemanticEffectSceneRecognition/.

Keywords
AttributionConvolutional neural networksInterpretabilityScene recognitionSemantic segmentation

Quality index

Bibliometric impact. Analysis of the contribution and dissemination channel

Independientemente del impacto esperado determinado por el canal de difusión, es importante destacar el impacto real observado de la propia aportación.

Según las diferentes agencias de indexación, el número de citas acumuladas por esta publicación hasta la fecha 2025-04-24:

  • Google Scholar: 2
  • Scopus: 1
  • OpenCitations: 1
Impact and social visibility

From the perspective of influence or social adoption, and based on metrics associated with mentions and interactions provided by agencies specializing in calculating the so-called "Alternative or Social Metrics," we can highlight as of 2025-04-24:

  • The use of this contribution in bookmarks, code forks, additions to favorite lists for recurrent reading, as well as general views, indicates that someone is using the publication as a basis for their current work. This may be a notable indicator of future more formal and academic citations. This claim is supported by the result of the "Capture" indicator, which yields a total of: 1 (PlumX).
Leadership analysis of institutional authors

There is a significant leadership presence as some of the institution’s authors appear as the first or last signer, detailed as follows: First Author (LOPEZ CIFUENTES, ALEJANDRO) and Last Author (BESCOS CANO, JESUS).