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Hauptverfasser: Ranjan, Ayush, Wen, Daniel, Bhat, Karthik
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2407.00592
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author Ranjan, Ayush
Wen, Daniel
Bhat, Karthik
author_facet Ranjan, Ayush
Wen, Daniel
Bhat, Karthik
contents Understanding the limitations and weaknesses of state-of-the-art models in artificial intelligence is crucial for their improvement and responsible application. In this research, we focus on CLIP, a model renowned for its integration of vision and language processing. Our objective is to uncover recurring problems and blind spots in CLIP's image comprehension. By delving into both the commonalities and disparities between CLIP and human image understanding, we augment our comprehension of these models' capabilities. Through our analysis, we reveal significant discrepancies in CLIP's interpretation of images compared to human perception, shedding light on areas requiring improvement. Our methodologies, the Discrepancy Analysis Framework (DAF) and the Transformative Caption Analysis for CLIP (TCAC), enable a comprehensive evaluation of CLIP's performance. We identify 14 systemic faults, including Action vs. Stillness confusion, Failure to identify the direction of movement or positioning of objects in the image, Hallucination of Water-like Features, Misattribution of Geographic Context, among others. By addressing these limitations, we lay the groundwork for the development of more accurate and nuanced image embedding models, contributing to advancements in artificial intelligence.
format Preprint
id arxiv_https___arxiv_org_abs_2407_00592
institution arXiv
publishDate 2024
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spellingShingle Unveiling Glitches: A Deep Dive into Image Encoding Bugs within CLIP
Ranjan, Ayush
Wen, Daniel
Bhat, Karthik
Computer Vision and Pattern Recognition
F.2.2; I.2.7
Understanding the limitations and weaknesses of state-of-the-art models in artificial intelligence is crucial for their improvement and responsible application. In this research, we focus on CLIP, a model renowned for its integration of vision and language processing. Our objective is to uncover recurring problems and blind spots in CLIP's image comprehension. By delving into both the commonalities and disparities between CLIP and human image understanding, we augment our comprehension of these models' capabilities. Through our analysis, we reveal significant discrepancies in CLIP's interpretation of images compared to human perception, shedding light on areas requiring improvement. Our methodologies, the Discrepancy Analysis Framework (DAF) and the Transformative Caption Analysis for CLIP (TCAC), enable a comprehensive evaluation of CLIP's performance. We identify 14 systemic faults, including Action vs. Stillness confusion, Failure to identify the direction of movement or positioning of objects in the image, Hallucination of Water-like Features, Misattribution of Geographic Context, among others. By addressing these limitations, we lay the groundwork for the development of more accurate and nuanced image embedding models, contributing to advancements in artificial intelligence.
title Unveiling Glitches: A Deep Dive into Image Encoding Bugs within CLIP
topic Computer Vision and Pattern Recognition
F.2.2; I.2.7
url https://arxiv.org/abs/2407.00592