Multimodal recommender systems leverage diverse information, to model user preferences and item features, helping users discover relevant products. Integrating multimodal data can mitigate challenges like data sparsity and cold-start, but also introduces risks such as information adjustment and inherent noise, posing robustness challenges. In this paper, we analyze multimodal recommenders from the perspective