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Update index.html
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fix typo 'noist' to 'noisy'
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CreamyLong authored Mar 4, 2024
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Expand Up @@ -223,15 +223,15 @@ <h3 id="1-Variable Aspect Ratios">(1) Variable Aspect Ratios</h3>
</p>
<!-- <ul>
<li><strong>High-quality User Instruct Data</strong>. We implement a dynamic masking stategy for batch training in parallel while maintaining flexible aspect ratios. Specifically, we resize high-resolution videos to make their longest side 256 pixels, maintaining aspect ratios, and then pad them with zeros on the right and bottom to achieve a consistent 256x256 resolution. This facilitates videovae to encode videos in batches and diffusion model to denoise batches of latents with their own attention masks.</li>
<li><strong>Multimodal Document/Chart Data</strong>. During inferencing, we use Position Interpolation[xx] to enable variable resolution sampling, despite training on a fixed 256x256 resolution. We downscale the position indices of the variable-resolution noist latents from [0, seq_length-1] to [0, 255] to aligning them with the pretrained range. This adjustment enables the attention-based diffusion model to handle sequences of higher resolutions.
<li><strong>Multimodal Document/Chart Data</strong>. During inferencing, we use Position Interpolation[xx] to enable variable resolution sampling, despite training on a fixed 256x256 resolution. We downscale the position indices of the variable-resolution noisy latents from [0, seq_length-1] to [0, 255] to aligning them with the pretrained range. This adjustment enables the attention-based diffusion model to handle sequences of higher resolutions.
</li>
</ul> -->

<h3 id="2-Variable Resolutions">(2) Variable Resolutions</h3>
<p>During inferencing, we use <a href="https://arxiv.org/pdf/2306.15595.pdf">Position Interpolation</a> to enable variable resolution sampling, despite training on a fixed 256x256 resolution. We downscale the position indices of the variable-resolution noist latents from [0, seq_length-1] to [0, 255] to aligning them with the pretrained range. This adjustment enables the attention-based diffusion model to handle sequences of higher resolutions.</p>
<p>During inferencing, we use <a href="https://arxiv.org/pdf/2306.15595.pdf">Position Interpolation</a> to enable variable resolution sampling, despite training on a fixed 256x256 resolution. We downscale the position indices of the variable-resolution noisy latents from [0, seq_length-1] to [0, 255] to aligning them with the pretrained range. This adjustment enables the attention-based diffusion model to handle sequences of higher resolutions.</p>
<!-- <ul>
<li><strong>High-quality User Instruct Data</strong>. We implement a dynamic masking stategy for batch training in parallel while maintaining flexible aspect ratios. Specifically, we resize high-resolution videos to make their longest side 256 pixels, maintaining aspect ratios, and then pad them with zeros on the right and bottom to achieve a consistent 256x256 resolution. This facilitates videovae to encode videos in batches and diffusion model to denoise batches of latents with their own attention masks.</li>
<li><strong>Multimodal Document/Chart Data</strong>. During inferencing, we use Position Interpolation[xx] to enable variable resolution sampling, despite training on a fixed 256x256 resolution. We downscale the position indices of the variable-resolution noist latents from [0, seq_length-1] to [0, 255] to aligning them with the pretrained range. This adjustment enables the attention-based diffusion model to handle sequences of higher resolutions.
<li><strong>Multimodal Document/Chart Data</strong>. During inferencing, we use Position Interpolation[xx] to enable variable resolution sampling, despite training on a fixed 256x256 resolution. We downscale the position indices of the variable-resolution noisy latents from [0, seq_length-1] to [0, 255] to aligning them with the pretrained range. This adjustment enables the attention-based diffusion model to handle sequences of higher resolutions.
</li>
</ul> -->

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