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Food Image to Cooking Instructions Conversion Through Compressed Embeddings Using Deep Learning

机译:食物形象到烹饪说明通过使用深入学习的压缩嵌入式转换

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摘要

The image understanding in the era of deep learning is burgeoning not only in terms of semantics but also in towards the generation of a meaningful descriptions of images, this requires specific cross model training of deep neural networks which must be complex enough to encode the fine contextual information related to the image and simple enough enough to cover wide range of inputs. Conversion of food image to its cooking description/instructions is a suitable instance of the above mentioned image understanding challenge. This paper proposes a unique method of obtaining the compressed embeddings of cooking instructions of a recipe image using cross model training of CNN, LSTM and Bi-Directional LSTM. The major challenge in this is variable length of instructions, number of instructions per recipe and multiple food items present in a food image. Our model successfully meets these challenges through transfer learning and multi-level error propagations across different neural networks by achieving condensed embeddings of cooking instruction which have high similarity with original instructions. In this paper we have specifically experimented on Indian cuisine data (Food image, Ingredients, Cooking Instruction and contextual information) scraped from the web. The proposed model can be significantly useful for information retrieval system and it can also be effectively utilized in automatic recipe recommendations.
机译:深度学习时代的图像理解不仅是在语义方面的蓬勃发展,而且还朝着产生有意义的图像的描述,这需要对深神经网络的特定跨模型训练,这必须复杂,足以编码精细的上下文与图像相关的信息,并且足够简单,以涵盖广泛的输入。将食物形象转换为其烹饪描述/说明是上述图像理解挑战的合适实例。本文提出了使用CNN,LSTM和双向LSTM的横模训练获得食谱图像的烹饪指令的压缩嵌入的独特方法。在这方面的主要挑战是可变的指令长度,每种配方的指令数量和食物形象中存在的多个食品。我们的模型通过通过实现具有高相似性与原始指令的烹饪指令的浓缩嵌入来通过转移学习和多级错误传播成功地满足这些挑战。在本文中,我们专门针对网络上的印度烹饪数据(食物形象,成分,烹饪指导和上下文信息)进行了专门试验。所提出的模型可以显着用来对信息检索系统有用,并且还可以在自动配方推荐中有效地利用它。

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